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Article

Performance of Equity Investments in Sustainable Environmental Markets

1
Faculty of Management, Canadian University Dubai, Dubai P.O. Box 117781, United Arab Emirates
2
Faculty of Engineering, Applied Science and Technology, Canadian University Dubai, Dubai P.O. Box 117781, United Arab Emirates
3
Department of Architecture and Built Environment, University of Nottingham, Nottingham NG7 2RD, UK
4
Faculty of Business, University of Wollongong Dubai, Dubai P.O. Box 20183, United Arab Emirates
*
Author to whom correspondence should be addressed.
Sustainability 2023, 15(9), 7453; https://doi.org/10.3390/su15097453
Submission received: 17 March 2023 / Revised: 19 April 2023 / Accepted: 26 April 2023 / Published: 1 May 2023
(This article belongs to the Special Issue Sustainable Finance and Risk Management)

Abstract

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Despite a significant increase in global clean energy investments, as part of the decarbonization process, it remains insufficient to meet the demand for energy services in a sustainable manner. This study investigates the performance of sustainable energy equity investments, with focus on environmental markets, using monthly equity index data from 31 August 2009 to 30 December 2022. The main contributions of our study are (i) assessment of the performance of trading strategies based on the trend, momentum, and volatility of Environmental Opportunities (EO) and Environmental Technologies (ET) equity indices; and (ii) comparison of the performance of sustainable equity index investments to fossil fuel-based and major global equity indices. Market performance evaluation based on technical analysis tools such as the Relative Strength Index (RSI), Moving Averages, and Average True Range (ATR) is captured through the Sharpe and the Sharpe per trade. The analysis is divided according to regional, sector, and global EO indices, fossil fuel-based indices, and the key global stock market indices. Our findings reveal that a momentum-based strategy performed best for the MSCI Global Alternative Energy index with the highest excess return per unit of risk, followed by the fossil fuel-based indices. A trend-based strategy worked best for the MSCI Global Alternative Energy and EO 100 indices. The use of volatility-based information yielded the highest Sharpe ratio for EO Europe, followed by the Oil and Gas Exploration and Production industry, and MSCI Global Alternative Energy. We further find that a trader relying on a system which simultaneously provides momentum, trend, or volatility information would yield positive returns only for the MSCI Global Alternative Energy, the S&P Oil and Exploration and Production industry, NYSE Arca Oil, and FTSE 100 indices. Overall, despite the superior performance of the MSCI Global Alternative Energy index when using momentum and trend strategies, most region and sector EOs performed poorly compared to fossil fuel-based indices. The results suggest that the existing crude oil prices continue to allow fossil fuel-based equity investments to outperform most environmentally sustainable equity investments. These findings support that sustainable investments, on average, have yet to demonstrate consistent superior performance over non-renewable energy investments which demonstrates the need for continued, rigorous, and accommodating regulatory policy actions from government bodies in order to reorient significant capital flows towards sustainable equity investments.

1. Introduction

The United Nations progress report on the 17 Sustainable Development Goals (SDGs), concluded that, as far as affordable and clean energy is concerned, the current progress made is lacking. While total renewable energy consumption rose by a quarter between 2010 and 2019, renewable energy consumption represented only 17.7% of the total energy consumed in 2019 [1]. COP27 held in November 2022 acknowledged that climate change is a common concern for humanity [2]. More importantly, it underlines an imperative need to tackle the intertwined global crises of climate change and biodiversity loss in the broader context of achieving the SDGs, including the critical importance of protecting, conserving, restoring, and sustainably using nature and ecosystems for effective and sustainable climate action. Global economic leaders recognized that the impacts of climate change aggravate the global energy and food crises, and vice versa, especially in developing nations. On top of setting a loss and damage fund to tackle devastating economic and non-economic losses such as forced displacement and impacts on cultural heritage, human mobility, and the lives and livelihoods of local communities, COP27 emphasized on an urgent call for rapid and sustained reductions in global greenhouse emissions. Particularly, it stressed on the value of encouraging a clean energy mix, including renewable and low-emission energies, as part of the gradual transition process toward cleaner and sustainable energy.
Global energy investment was expected to rise by nearly 8.5% to USD 2.391 trillion in 2022, a level which is well above pre COVID-19 levels [3]. The main contributor remains the power supply sector, in advanced economies, Emerging Market and Developing Economies (EMDE), and China, with all three contributors witnessing increasing power generation investments overall post COVID-19. Despite an increase in investments in clean energy from USD 1.1 trillion to USD 1.4 trillion over 2019–2022, investments in fossil-fuel supply, represented by oil, gas, and coal, account for nearly 97% of investments in total fuel supplies globally, a percentage which hardly changed since 2019 [3]. Investment in coal, oil, gas, and low-carbon fuel supply is the sole area which remained below levels seen before to the 2019 coronavirus pandemic. Alternatively stated, the most noticeable transition towards cleaner energies is in the power sector with continued upsurge in renewable power, where renewables, grids, and storage currently represent more than 80 per cent of the total power investment.
However, global clean energy investments are still short of meeting the increased demand for energy services sustainably [3]. Clean energy spending in EMDEs excluding China in 2022 is still at 2015 levels, with various government owned entities being indebted with higher costs of borrowing due to worsened economic conditions, resulting in dampened the ability to fund energy ventures. This resulted in most increases in renewables, grids and storage occurring in areas other than developing economies. It led to reduced sales of clean energy products such as Electric Vehicles (EVs), with more than 90% of public spending on EVs systems taking place in the U.S., China, and Europe [3]. More importantly, poor nations with a lack of accommodating community policies are faced with the possibility of energy poverty, where roughly 90 million people in Africa and Asia cannot afford to pay for their basic energy needs.
The situation is further exacerbated by the attempts of Europe to reduce its dependence on the Russian oil, gas, and coal supplies following the Russian-Ukraine crisis, global inflationary pressures, and volatile energy prices. All these external factors add to the existing pressure for investors to consider green energy investments, especially in less attractive EMDEs [3]. While higher energy prices in 2022 provide a rise in oil and gas producers’ net profits, nearly 50 per cent of the additional USD 200 billion in capital investments in 2022, would be absorbed by higher costs, instead of increasing energy supply capacities or future investments. These increasing costs are caused by various factors, including a limited market of specialized labor, supply chain pressures (e.g., the shortage of semi-conductors and uncertainty of automakers to meet the demand of electric vehicles), the impact of higher energy prices on cost of production of raw materials such as cement and steel, all of which eventually translate into a total consumer energy bill exceeding USD 10 trillion in 2022 [3].
Given the uncertainty on the long-term outlook for oil demand, higher investments in oil are not sustainably guaranteed, backed by the refining sector which had its first reduction in global refining capacity in 2021. Similarly, high prices question the long-term outlook for gas demand, especially in price sensitive developing nations, where new gas-fired capacity was the lowest in fifteen years. With climate friendly corporations delivering higher a return on investments, complemented with a lower cost of financing, financial markets have also evolved in the last decade, by (i) introducing investment opportunities through the rise of new environmentally friendly assets classes or financial products; (ii) and creating a paradigm shift among investors to consider climate change factors in investment decisions [4]. While there were various actions from the investment community on the paradigm shift, e.g., the Portfolio Decarbonatization Coalition, the Montreal Carbon Pledge, and the Task Force on Climate Related Financial Disclosure, much less has been captured on the performance of sustainability indices which promote cleaner energies [4].
The primary objective of this study is to assess the performance of sustainability-based indices which are linked with cleaner energy sources. Specifically, the study analyzes the performance of sustainable investment indices whose constituents meet Environmental, Social and Governance (ESG) needs of investors. All the constituents satisfy the Green Revenue Classification System (GRCS). The paper focusses on alternative energy-based equity indices, and more particularly, environmental markets equity index series. To assess the performance of these indices, technical analysis trading strategies is used to capture market trends by using moving average (MA); market momentum by employing the Relative Strength Index (RSI); and volatility through the use of the Average True Range (ATR).
The present study contributes to the existing literature, by being the first, to our knowledge, to (i) capture trend, momentum, and volatility information in sustainable investment indices such as environmental market equity indices; (ii) use technical analysis tools to assess the performance of trading strategies which are based on trend, momentum, and volatility; (iii) analyze how industry- and regional-based indices differ in terms of performance; (iv) compare the performance of environmentally sustainable equity indices with both traditional global equity and oil-based indices; and (v) assess a trading system which provides the simultaneous use of momentum, trend, or volatility-based information to generate positive excess return per unit of risk in sustainable equity index investments.
The key players in the smooth functioning of financial markets are investors, investment institutions and government regulation. Key findings of this study have some important economic significance for investors, investment institutions, and regulatory bodies. For instance, an assessment of the performance of sustainable equity investments allows the investor to make more informed decisions when deciding whether to invest in traditional financial products such as exchange traded funds (ETFs) which are based on traditional equity markets and oil-linked, or rather in those indices whose constituents are aligned with climate change consciousness, and a gradual move away from traditional fossil fuel-based markets. As sustainable equity investments carry additional risk factors such as climate change and policy actions, the move from traditional equity investments on energy commodities such as fossil fuel-based ETFs and portfolios requires a sustained outperformance of sustainable investments over fossil fuel-based equity investments. This study tackles this issue by comparing the performance of environmental market sustainable investments with traditional oil-based equity indices. Further, since various investors consider stock market indices as a long-term investment, where for example, the U.S. stock market index have mostly witnessed exponential increases since 2014, this study also compares sustainable equity investments with global stock market indices. Our findings also shed further light as to whether environmental technologies and environmental opportunities indices offer a more attractive option to the investor in terms of his/her portfolio’s excess return per unit of risk. A comparison among regional or industry specific indices provides further guidance as to which industry or region, is more attractive to include in a portfolio which can comprise multiple ETFs as part of portfolio diversification benefits. Driven by investors’ demand for sustainable finance, a shift from non-renewable to sustainable-based equity investments can drive the surge of specific environmental markets sectors. However, a rise in investors’ interest in sustainable finance can be possible with a continuous and sustainable outperformance of green equity investments over fossil fuel-based investments. Alternatively stated, the added risks taken by investors in sustainable investments need to be compensated with higher returns than fossil-fuel equity investments.
For investment institutions, due to the increased attention and investments in greener energies, particularly in the U.S., EMDE, and China, our findings provide some light into which direction sustainable investments are heading. Although the study focusses primarily on indices from the environmental markets’ family class, the performance of environmental technology index series and environmental opportunities index series allows investment product providers to consider constructing financial products such as ETFs, derivatives, and retail/institutional funds where those abovementioned indices are used as benchmarks. This eventually allows resources, e.g., specialized finance skills, to be directed towards constructing and managing green sustainable portfolios, based on market demand for sustainability-based financial products. This results in the need to focus more on regions, sectors, rather than broad-based exposures, which brings economic value in terms of constructing specific greener-based portfolios which can perform sustainably.
Last but not least, to governments and regulatory bodies, the tectonic shift of capital towards sustainable investing means that industry, sectors, and individual companies are affected. Simply put, the changes in investors’ preferences, through a shift away from companies pursuing fewer or no green objectives towards those pursuing greener objectives means the specific industries’ and sectors’ contributions to the economy could change. As these shifts are happening, higher returns are expected, particularly for those which are more closely related to risks such as climate change. Alternatively stated, if sustainability is valued by investors, asset prices should reflect those, relative to the risk sustainable investments add to existing risks. This means more rigor in regulations in terms of definitions, guidelines, and frameworks. This can translate in a more complex environment, where both local and regional-wide regulations are seeking adoptions. For instance, the Sustainable Finance Action Plan (SFAP) is a collection of European Union (EU) policy actions to encourage sustainable investments, where reforms seek the reorientation of capital flows towards sustainable investments, mainstreaming sustainability into risk management practices, and foster transparent and long-termism in financial activities. The SFAP, as a policy to promote green finance, led to the Sustainable Finance Disclosure Regulation (SFDR), a European-wide legal framework to improve transparency in the market for sustainable investment products, to prevent greenwashing and increase transparency around sustainability claims made by financial market participants.
The remainder of the paper provides an overview of the trends in fossil fuel-based investments, a review of the types of risk introduced by sustainable investments, policy actions in the area of sustainable investments, and a review on the use of technical analysis in financial markets. The methodology section provides a breakdown of the different technical analysis models, followed by the data section which provides the data specifications of the financial products under analysis. The research findings are laid out, starting with some descriptive statistics. Some conclusive remarks are gathered at the end of the study.

2. Literature Review

2.1. Fossil Fuel-Based Investments

While the focus of this study is on investment in renewable energies, it is also important to look at investment in traditional oil and gas activities, and fossil-fuel investments. Compared to 2019, investment in the traditional oil and gas sector has fallen in all national oil companies (NOCs), except for Middle East NOCs (Saudi Aramco and ADNOC), which planned to spend more in 2022 as part of using spare capacity. Russian counterparts had similar plans at first but were affected by international sanctions, requiring a reassessment of their investment plans. Regarding fossil-fuel investments, investing in coal is less capital-intensive than oil and gas, with an annual increase of USD 10 billion since 2019. Both China and India, as heavy players in the coal industry, are increasing their coal production to tackle domestic coal shortages and reduce imports, despite the former making pledges to cease setting up coal-fired plants abroad. As far as oil and gas upstream is concerned, on top of EMDEs, where major oil players such as the UAE and Saudi Arabia coexist, the U.S. was expected to increase its upstream investment by 30% in 2022. The U.S. short-term investment strategies can be explained by the pursuit to increase U.S. shale oil and gas output. Comparatively, Europe’s oil and gas upstream is relatively low and not increasing, confirming their long-term investment strategies rather than short-term adjustments to oil price volatilities. While the decrease in European imports of Russian oil and gas introduced opportunities in liquified natural gas, such projects take about four years to construct.

2.2. Risks on Sustainable Investments

Beyond the gradual rise of investments in cleaner energies and the fall in traditional fossil-fuel investments, investors are exposed to two environment-related risks, namely investor-level risks and asset level risks. Individual-level risks can be further categorized into investment risk, regulatory risk, stranded asset risk, innovation risk, and reputational risk. Firstly, it is reported that funds with over USD 1 trillion in assets under management missed out on USD 22 billion by investing in institutions with negative impact on climate [5]. Secondly, regulators can enforce investments which do not adversely affecting climatic conditions as seen in France, the U.K., and Europe [6]. Thirdly, portfolios consisting of companies that rely heavily fossil-fuels can be affected if the non-renewables can no longer be used. Fourth, an increase in investors’ interest in alternative renewable energies can disrupt the business model of industries which rely heavily on fossil-fuels. This is backed by studies that find that industries linked to energy are positively sensitive to oil price changes [7,8,9]. Fifth, campaigns such as ‘divesting fossil fuel’ can affect the reputation of investors who hold assets which harm the global space, including crude oil and natural gas. In terms of asset-level risks, this can be categorized as carbon pricing risk, litigation risk, and regulatory risk. Firstly, carbon pricing through local/foreign taxes and emission trading schemes can impact the net income of companies with a heavy carbon footprint, which in turn affect the stock prices and returns of shareholders. Secondly, regulators can impose measures to protect the environment in some areas. Last but not least, companies with high carbon footprints can be made responsible for damaging the environment, and subject to financial penalties.

2.3. Policy Actions in Sustainable Energy

Both government and individuals play a part in ambitious but necessary actions that are needed in the decarbonization process. For instance, government policymakers have been called upon to expedite the development, deployment, and diffusion of technologies, and to implement policies, to move gradually towards low emission energy systems, including the quick scaling up the deployment of clean power generation and energy efficiency systems, including fast-tracking efforts towards the phase down of unabated coal power and phase out of inefficient fossil-fuel subsidies. At the individual level, investors can participate in the process by positioning their portfolios with financial products concerned with cleaner energies such as wind, solar, and hydroelectric, rather than energy commodities such as crude oil. However, there are challenges such as a slower pace of electrification, particularly for those who are hard to reach regions. Further, there are increased energy, commodity, and shipping costs to manufacture and transport biofuel, solar, and wind turbines. Nonetheless, collection action to achieve net zero emissions by 2050 could increase the size of the world economy by nearly USD 45 trillion in today’s worth from 2021 to 2070 [10].
In addition to future projections made by various entities on the economic value of cleaner energies, the role that private and public sectors play in the energy transition is another critical factor to attract investors to sustainable energy finance. For example, as part of COP27 Breakthrough Agenda, states representing over fifty percent of the global Gross Domestic Product (GDP) set out a 1-year action plan to help make clean technologies cheaper and more accessible globally. Particularly, a package of 25 collaborative actions have been set up to accelerate decarbonization in five key sectors, namely, road transport, power, hydrogen, steel, and agriculture. For example, three agreements include (i) driving investment in agriculture Research, Development and Demonstration (RD&D) to create solutions to address the challenges of food insecurity, climate change, and deprivation of the environment; (ii) developing common definitions for low-emission and near-zero emission steel, hydrogen, and sustainable batteries to help direct billions of pounds in investment, procurement, and trade; and (iii) accelerate the setting up of essential infrastructure projects including a minimum of 100 hydrogen valleys, a minimum of 50 large scale net-zero emission industrial plants, and various major cross-border power grid infrastructure projects [11]. An example of country collaborations includes the UAE and the U.S. which participated in the 100 GW Partnership to Accelerate Clean Energy (PACE) and the 10 GW wind energy agreement.
Moreover, in 2022, 65 global businesses joined the First Movers Coalition which targets decarbonization of heavy industry and long-distance transport sectors responsible for nearly one-third of global emissions [12]. They intend to invest in innovative green technologies, which will in turn ensure new technologies are available for scale-up by 2030 and thereby make a significant contribution to achieving net zero emissions by 2050. Specifically, these companies, with market capitalization value USD 8 trillion, committed USD 12 billion in 2030 purchase commitments for green technologies as part of the decarbonization process [13]. In the same vein, the European Investment Fund (EIF), Europe’s largest venture capital and private equity financier, signed investments of EUR 247 million to enable five equity funds to back EUR 2.5 billion of climate action investment that helps to deliver the European Union’s climate and energy targets. The new financing adds to the European Green Deal, the roadmap for Europe to become the first climate-neutral continent by 2050, and REPowerEU, the plan to swiftly reduce dependency on Russian non-renewable energy and speed up the transition towards sustainable greener energies. These funds are PureTerra Ventures, Growth Blue Fund I, Zintinus Fund I, SUMA Capital Climate Impact Fund III, and the Eiffel Transition Infrastructure Fund [14]. While the SUMA Capital Climate Impact Fund III represents an infrastructure fund of EUR 75 million in greenfield energy transition and circular economy projects predominantly in Spain, the Eiffel Transition Infrastructure Fund is an innovative fund intended to provide equity bridge financing for renewable energy infrastructure assets in Europe [14].
In addition to the aforementioned surge in renewable power, several policy actions are gaining momentum in pushing for cleaner energy technologies. Firstly, there is a rise in energy efficiency where policymakers in Europe, Japan, and China are putting more emphasis on higher energy standards in construction, and encouraging, through government support, the adoption of cleaner technologies such as electric heat pumps, in light of higher fuel prices restraining consumer purchasing power. Secondly, there is a noticeable uptick in the sales of electric vehicles (EV), in line with the electrification contribution to a cleaner and more accessible world. EVs include cars, two and three-wheelers, and electric buses where countries such as India have ordered more than 5000 electric buses. Thirdly, post the Russian-Ukraine crisis, low emissions hydrogen gained support in Europe where annual investment in low-carbon hydrogen aims to supply the additional 15 Mt of hydrogen in the REPowerEU target plan. Fourth, more than 125 commercial-scale carbon dioxide (CO2) capture in 20 countries were declared in 2021, with the aim to capture, use and store CO2 through different applications, including biofuel and hydrogen production. Carbon Capture Usage and Storage (CCUS) projects in 2021 have already attracted nearly USD 2 billion in investments.

2.4. Technical Analysis Based Strategies

The first proponents of technical analysis can be tracked back to more than fifty years ago to groundwork using ten different trading filters in nine foreign exchange markets and reported excess returns [15]. Importantly, there are two seminal works on the effectiveness of technical analysis. The first study found that market timing-based strategies result in negative returns when adjusted for transaction costs [16]. The second study supported the efficient market hypothesis that current market prices reflect all the available information such that relying on this assumption would be unprofitable or result in a positive return that is accompanied by an unacceptable risk level [17]. The findings of Fama and Ball were supported by other studies which found that trading using technical analysis rules were not profitable for U.S. futures markets [18].
Although numerous trading strategies demonstrated evidence of success in traditional markets including cryptocurrencies, currencies markets, fixed income, and equity markets, uncertainty in financial markets complicates the choice between fundamental analysis and/or technical analysis techniques for investors and traders [19,20,21,22]. It was found that both market conditions and profitability vary over time when applying technical analysis [23]. This is backed by studies which looked at the performance of the Average Directional Index as a market timing tool and found weekly trading horizons to be more profitable than monthly ones [24]. Similarly, analysis of various companies using both fundamental and technical analysis found that the differences in the performance using either analytical techniques were less evident for energy equities and the combination of both techniques improved performance of equity prices [25]. For instance, the Ichimoku Cloud indicator is useful forecasting energy stock price movements, and also recommends the capture of momentum through indicators such as RSI [26].
While some studies established that technical analysis has no real value, except for creating some occasional comfort and amusement to the investor [27], others found their trading system, which includes technical indicators such as RSI, volume, and moving average, to outperform the market after adjusting for transactions costs [28]. In the same vein, it was reported that most fund managers in five countries use technical analysis [29]. In support of technical trading was that it found trend-following strategies to be profitable in commodity futures markets [30]. It was further found their trading-based system to outperform a traditional buy-and-hold strategy for S&P 500 stock index futures [31]. Likewise, using RSI and moving average yielded significant positive returns in the Singapore Stock Exchange [32]. More recently, the use of RSI on USD-based currency pairs, including crude oil and natural gas, was analysed, with findings reporting that the energy markets had the highest risk, compared to the most actively traded foreign exchange rates [33].
Some authors in existing literature provide a good review of pioneer trend-following systems such as the Dow Theory, upon which today’s Dow Jones Industrial Average is based [34,35]. More recent advancements in the field of average-based techniques include an adaptive moving average model for the Euro/US dollar currency pair and achieved higher annualized returns, lower annualized risk, but accompanied with higher number of trades, than the naïve buy-and-hold strategy [36]. An optimized moving average crossover strategy over the SPDR S&P 500 ETF suggested that the trend-following strategy outperform a buy-and-hold strategy [37]. To capture inherent volatility, various measures have been used in the existing literature on investment strategies including standard deviation and ATR [38,39,40,41,42]. For the purpose of this study, the latter one is used, due to its ability to capture volatility from gap moves. Similar to commodities, which tend to be more volatile than common stocks, equity indices based on constituents which are prone to the abovementioned sustainable investment risks could be susceptible to gap moves. ATR, as a volatility measure, enables the capture of gaps events [43].

2.5. Sustainable Equity Investing

Good Environmental Social and Corporate Governance (ESG) performance enhances the confidence of investors and helps a firm to establish a good investor relationship. Recent findings support that, while making investment decisions in emerging markets, firms can improve their investment performance by incorporating ESG factors into investment decisions [44]. Similarly, a study on sustainable investment performance revealed that the ETFs with the lowest sustainability ratings outperformed the market pre-COVID crash [45]. They conducted their study by investigating the risk-adjusted returns of 62 sustainable (ESG) ETFs before and during the COVID-19 market crash and found that ESG risks can be rewarded with higher returns. According to MSCI’s 2021 Global Institutional Investor Survey, global non-ESG equity funds have received cumulative outflows of USD 700 billion through February 2021, in contrast to ESG equity funds, which saw cumulative inflows of USD 450 billion [46]. Further, sustainable development mechanisms exist in the relationship between corporate environmental performance and financing costs [47]. A recent study consisting of 1452 firms from 16 different European countries concluded that companies with better ESG performance show better returns [48]. They had significantly higher cumulative abnormal returns and exhibited significantly lower volatility.
Based on the above mixed findings regarding technical analysis, for the purpose of this study, RSI is adopted as a momentum indicator, long-term moving averages to capture trend, and the average true range to capture volatility. To capture and compare performance across investments, the reward to volatility ratio or Sharpe ratio and the Sharpe per trade are used [49,50]. While the former represents the excess returns for each unit of risk where returns represent the difference between the risk-free rate and average return, the later adjusts the Sharpe to the number of trades as a proxy to capture transaction costs, since the more trades there are, the higher the transaction costs. As conventionally used in literature, the risk-free is usually proxied by the 3-month U.S. treasury bill rate. To our knowledge, there are no existing research which investigates the performance of sustainability equity indices, specifically environmental markets index series, using technical analysis in the areas of trend, momentum, and volatility. Our major contribution is to bridge the gap in the area related to the performance of sustainable equity index investing, with a focus on environmental market index investments as alternative energy sustainable investments.

3. Methodology

Due to the scope of the study and availability of various technical analysis indicators, a focus on RSI to capture momentum, moving average to capture underlying trends, and ATR to provide volatility information was made.
Relative Strength Index (RSI)—The RSI, introduced by Wilder in 1978, is one of the most popular technical indicators used to determine momentum in price movements, i.e., the rate of the rise or fall of a security’s price [43]. Compared to constructing a momentum line which uses price differences, the RSI avoids the issue of having erratic shifts in the momentum caused by sharp price advances or declines, by smoothing the price changes. Further, as a momentum oscillator which fluctuates between 0 and 100, it provides a vertical range for comparison purposes. The RSI captures the cumulative gain in price relative to cumulative loss in price, and is calculated as follows:
R S I = 100 100 1 + R S
where R S = Sum   of   gains Sum   of   losses = A v e r a g e   g a i n A v e r a g e   l o s s
A v e r a g e   g a i n = A v e r a g e   g a i n   o v e r   l a s t   14   p e r i o d s ,   1 s t   a v e r a g e   g a i n P r e v i o u s   A v e r a g e   g a i n × 13 + c u r r e n t   g a i n 14 ,   s u b s e q u e n t   a v e r a g e   g a i n s A v e r a g e   l o s s = A v e r a g e   l o s s   o v e r   l a s t   14   p e r i o d s ,   1 s t   a v e r a g e   l o s s P r e v i o u s   A v e r a g e   l o s s × 13 + c u r r e n t   l o s s 14 ,   s u b s e q u e n t   a v e r a g e   l o s s e s
For the purpose of this study, a lookback frequency of 14-month period was adopted, where 14 was the default setting on most trading platforms showcasing the RSI indicator. RSI values above (below) the 70 (30) levels are considered overbought (oversold) [50]. For the purpose of our study, price was analogous to the index value. Although, it can be argued that an index value is not price, all the environmental equity indices used in the study can be used to create financial products such as ETFs as mentioned earlier.
Moving Averages (MA)—Primarily used in smoothing noisy data, MA partitions data into overlapping sets of a given sample size, by shifting along one step at a time. While there exists plentiful literature about the success of trend-following systems (e.g., [34]), the 200-day MA is the most cited long run trend indicator. For example, the long run MA on the Dow Jones Industrial Average (DJIA) over the 1886–2006 period and found the market timing strategy to outperform a buy-and-hold strategy [51]. Similarly, a 10-month MA for the S&P 500 market index over the 1901–2012 period was tested and found the market timing strategy to outperform a buy-and-hold of the index in terms of returns, volatility, and Sharpe performance measurements [52]. Given a series of numbers, θ i i = 1 N , the n-moving average ( S i ) of the series numbers can be defined as the arithmetic average of subsequences of n terms as follows:
S i = 1 n j = 1 i + n 1 θ j
The direction of the MA conveys information about prices, where a rising (falling) MA indicates that prices, on average, are rising (falling). Similarly, a rising (falling) long-term MA echoes a long-term uptrend (downtrend). Although an MA (200) is preferred to capture long term trend, due to the use of a monthly data frequency, an MA (100) based on monthly lookbacks captures long-term trend information. An MA (200) is not feasible since most environmental equity indices were introduced to financial markets only less than 15 years back. In line with [53], who finds that a double crossover MA strategy outperformed a naïve buy-and-hold strategy for the SDPR S&P 500 ETF, we constructed an MA series with 50 and 100 lookback periods to capture medium-term to long-term trends and test the performance of a double crossover strategy based on 50 and 100 lookback periods. A long-term investment horizon in line with the sustainable investment products was assumed.
To reduce the effect of lags, an Exponential Moving Average (EMA) instead of a simple moving average was used. A simple MA (SMA) is the arithmetic average of previous prices over a specific time period as defined by Equation (1). k represents the weighting multiplier, with an EMA (50) having a 3.92% weighting to the most recent price, and an EMA (100) having a weighting of 1.98%. For the first EMA value, an SMA value is used.
E M A : { C u r r e n t   c l o s e E M A p r e v i o u s   d a y * k + E M A p r e v i o u s   d a y   c l o s e
where k = 2 n + 1 .
Average True Range (ATR)—The more uncertainty there is in a financial product’s price, the greater the possibility of gapping, which results when there is a discontinuity in the security’s price. Due to the added risks that environmental issues such as climate change and related policy actions bring to financial products e.g., environmental equity indices, a volatility measure such as ATR is preferred to other measures which capture only high and low range. In support, volatility indices are closely related, and MA rules are particularly profitable in volatile conditions [54]. Using a default 14-period setting to calculate the moving average of true range as proposed, ATR values are estimated as follows:
: C u r r e n t   H i g h C u r r e n t   L o w 14 ,   f i r s t   A T R   v a l u e [ P r e v i o u s   A T R × 13 + c u r r e n t   T R ] 14 ,   s u s b s e q u e n t   A T R   v a l u e s
where
T R = m a x C u r r e n t   H i g h C u r r e n t   L o w C u r r e n t   H i g h P r e v i o u s   C l o s e C u r r e n t   L o w P r e v i o u s   C l o s e
Current High (Low) represents the current high and current low environmental equity index values. Previous Close is the previous closing value of the index. For the first TR value, Current High-Current Low is used, resulting in the first ATR being C u r r e n t   H i g h C u r r e n t   L o w 14 . The maximum of Current High-Current Low, absolute value of Current High-Previous Close, and Current Low-Previous Close is used as TR value. Subsequent ATRs are smoothed by including the previous ATR. While ATR values provide volatility information, ATR bands, as part of a strategy which includes volatility as an input, are also used. The ATR band adjusts the price by using a multiple of the ATR value. For the purpose of our study, with the prior assumption of sustainable and long-term investing, the multiple ( θ ) was set to 5. The ATR band is constructed as follows:
A T R   b a n d : C u r r e n t   C l o s e θ A T R ,   l o w e r   A T R   b a n d C u r r e n t   C l o s e + θ A T R ,   u p p e r   A T R   b a n d

4. Data

FTSE Environmental Market Indices, which are further categorized into Environmental Opportunities (EO) and Environmental Technologies (ET) indices, are selected. With equity as asset class, the FTSE Environmental Markets indices are part of FTSE Russell Climate Indices, where a primary objective is to accelerate to a green economy by constructing investment strategies with exposure to green opportunities caused by climate change issues. The FTSE Russell Green Revenues data classification model is used to help investors understand the global industrial transition to a green and low carbon economy with consistent, transparent data and indices. Companies are analyzed and categorized using a unique industrial taxonomy for green goods and services that covers 10 sectors, 64 subsectors, and 133 micro-sectors. Revenue classification is based on the Green Revenues Classification System (GRCS), which was created following feedback from the market via the FTSE Russell Green Industries Advisory Committee and the international High Level Expert Group on Sustainable Finance (HLEG). While EO equity indices are constructed for investors interested to invest in a range of companies which provide products and services that deliver solutions to environmental challenges, ET equity indices are more suited for investors who seek to invest in pure-play companies whose core business is the development and deployment of environmental technologies. A company is eligible for inclusion in the EO index series if its green revenues percentage is at least 20%. Similarly, a company can be added in the ET index series if its green revenues percentage is at least 50% from Tier 1 activities, where Tier 1 refers to micro-sectors with clear and significant contribution to greenness [47]. Both EO and ET index specifications are laid out in Table 1. To avoid overemphasis on FTSE Russell-based indices and allow for comparison, the MSCI Global Alternative Energy Index is also included, where constituents derive at least 50% of their revenues from products and services in alternative energy, sustainable water, pollution prevention, green building, and energy efficiency. Although the FTSE Environmental Opportunities AIM (Alternative Investment Market) U.K. index is excluded due to the unavailability of data post June 2022, it shared a strong positive correlation of 0.76 with its counterpart FTSE Environmental Opportunities U.K. index. The study is conducted over the period 31 August 2009 to 30 December 2022, using monthly data from FactSet, FTSE Russell, MSCI, and SPGlobal.
Table 1 provides a breakdown of the environmental market indices (EO and ET). EO (ET) represent all environmental opportunities (technology) equity indices. The EO indices are provided both at regional (Europe, U.K., U.S., Asia-Pacific, Asia-Pacific, excluding Japan, Japan) and sector (energy efficiency, water technology, water and pollution control technology, renewable and alternative energy) levels. The FTSE EO All Share index represents all companies engaged in significant environmental business activities and have a minimum of 20% of their revenues derived from environmental products and services. The FTSE EO 100 index reports the performance of the top 100 companies by market capitalization in the FTSE EO All Share index. FTSE ET 50 represents global companies whose core business is in the development and deployment of environmental technologies and have a minimum of 50% of their revenues derived from environmental goods and services with clear and significant impact. The MSCI Global Alternative Energy index constitutes of emerging and developed market companies which source at least 50% revenues from products and services in alternative energy.
The NYSE Arca Oil Index is a price-weighted index measuring the performance of global companies involved in the exploration, production, and development of petroleum. The S&P Oil and Gas Exploration and Production index captures the performance of the largest publicly listed in U.S. companies involved in the exploration and production of oil and gas globally. MSCI World index tracks mid-cap and large constituents in 23 developed economies, capturing roughly 85% of the free float-adjusted market capitalization in each nation. The FTSE Euro 100 index reports the performance of the 100 largest blue-chip companies in Europe which are part of the European Monetary Union (EMU). FTSE World Asia-Pacific tracks the performance of 8 developed markets in the Asia-Pacific region, with Japan with a weight of more than 45% in the index. Lastly, S&P 500 (FTSE 100) represents the top 500 (100) publicly listed companies in the U.S. (U.K.), based on market capitalization. Figure 1 (Panel A) displays the monthly index values for the select environmental markets and Panel B displays index values for the fossil fuel-based and global stock markets. As observed in Panel A, all sustainability-based indices witnessed a rise in value since 2009, with 2022 values being higher than 2009s. A noticeable uptick was observed since 2020 where the green economy advanced faster compared to earlier years. This was followed by a general correction in global markets. Although not shown here, month-to-month returns fluctuated between −24% (MSCI Global Alternative Energy index) and 22% (EO Energy Efficiency index). A buy-and-hold strategy from 2009 yielded the highest (lowest) return of 512% (−76%) for the EO USA (MSCI Global Alternative Energy) index. All environmental markets indices were negatively impacted by the early COVID-19 (Jan-March 2020) with the lowest return of −20% for the EO U.K. index on a month-month basis. Similarly, from Panel B, all fossil fuel-based, and global market indices were negatively affected by early COVID-19 impact, with the S&P Oil and Gas Exploration and Production Industry index posted a negative return of −76% on a buy-and-hold strategy from 2009. All major stock markets witnessed a similar recovery with a broad market correction in early 2020. On a month-to-month basis, both the S&P Oil and Gas Exploration and Production Industry and Arca Oil indices reported the highest losses of 46% and 35% in March 2020, followed by the highest gains of 66% and 26% for the same two fossil fuel-based markets. The highest (lowest) return on a buy-and-hold strategy since 2009 was reported for S&P 500 with a return of 367% in December 2021.

5. Research Findings

5.1. Descriptive Statistics

3381 monthly observations of the environmental markets equity indices, including fossil fuel-based and global market equity indices are collected. Correlation values vary from −0.01 to 0.995 among the environmental market equity indices. Weak positive correlations were found between MSCI Global Alternative Energy and Environmental Opportunities (EO) equity indices such as EO Japan, EO Asia-Pacific, EO USA, EO Waste and Pollution Control Technology, and EO Water Technology. A weak negative correlation was observed between the MSCI Global Alternative Energy and EO U.K. indices. The rest of the environmental market equity indices demonstrated a strong positive correlation. Moderate correlation values were identified between MSCI Global Alternative Energy and the following indices: EO Europe, EO Energy Efficiency, ET 50, EO All Share, EO 100, as well as EO Renewable and Alternative Energy and EO U.K. A moderate correlation of 0.62 was also detected between S&P Oil and Gas Exploration and Production Select Industry and NYSE Arca Oil Index. Correlations of global market equity indices fluctuated between from 0.025 and 0.995. Weak positive correlations were observed between FTSE 100 and World Asia Pacific, S&P 500 and FTSE 100, and MSCI World Index and FTSE 100. Remaining global market equity indices demonstrated a positive strong correlation. With values expanding from 27.16 for MSCI Global Alternative Energy to 11,557.43 for FTSE 100, the average values ranged from 63.97 for MSCI Global Alternative Energy to 9338.00 for FTSE 100. In total, 50% of MSCI Global Alternative Energy observed values are below 54.96. The value of the first and third quartile are 48.32 and 83.28, respectively. In total, 50% of FTSE 100 values are below 9385.93. The first and third quartile are 8740.97 and 9923.63, respectively. While the S&P Oil and Gas Exploration and Production Select Industry Index had the highest value of a standard deviation (SD) of 2452.12, the lowest value of a standard deviation (SD) of 23.39 was found for MSCI Global Alternative Energy. All inspected indices were positively skewed ranging from 0.01 to 1.51. However, the EO U.K. and NYSE Arca Oil Index were negatively skewed. Except for EO Asia-Pacific, excluding Japan, ET 50, EO All Share, EO 100, NYSE Arca Oil Index, and FTSE Euro 100, all equity indices had negative kurtosis values (Table 2).

5.2. Momentum in Equity Indices

To capture the momentum in equity indices, the RSI as a momentum oscillator is used. The use of monthly data enables an analysis of the momentum in the change in index values, where investments horizons are long-term, which is aligned with sustainable long-term investments. Figure 2 displays the environmental markets equity indices and Figure 3 displays the traditional global market equity indices. Environmental market indices include both Environmental Opportunities (EO) and Environmental Technology (ET) equity indices. Specifically, the EO and ET markets displayed are EO Asia-Pacific excluding Japan, EO Japan, EO Asia-Pacific, EO U.S., EO U.K., EO Europe, EO Renewable and Alternative Energy, EO Waste and Pollution Control Technology, EO Water Technology, EO Energy Efficiency, ET 50, EO All Share, Global Alternative Energy, and EO 100. EO and ET markets are compared with traditional equity indices, namely, the S&P Oil and Gas Exploration and Production Industry, NYSE Arca Oil, FTSE World Asia Pacific, FTSE 100, FTSE Euro 100, S&P 500, and MSCI World. EO markets indices provide both regional (e.g., U.S., U.K., Europe) and specific sustainable sector performance (e.g., waste and pollution control technology, water technology). Similarly, the selected traditional equity indices are either industry focused (e.g., S&P Oil and Gas Exploration and Production) or regionally based (e.g., FTSE 100 for the U.K., FTSE Euro for Euro).
Figure 2 shows that most of the RSI values for all environmental market indices, including the MSCI global alternative energy index, fluctuated between the overbought and oversold levels. The movement of RSI values were largely aligned with index value movements. However, there were instances where the RSI values crossed above (below) the 70 (30). Noticeably, there were a few overbought with no oversold signals, suggesting environmental indices witnessed more value increases than drops. This can be supported by the emergence of financial products such as EO and ET which aim to encourage investments in cleaner and sustainable energy sources. Importantly too, all FTSE environmental indices, including the MSCI global alternative energy equity index, experienced a drop in index values around late 2021. This was mostly aligned with RSI values rising above the 70 level, suggesting an overbought period.
In comparison, as seen in Figure 3, the RSI values for more fossil fuel-based indices such as Oil and Gas Exploration and Production Industry and the NYSE Arca Oil, fluctuated often around the 70 and 30 levels, suggesting more overbought and oversold signals. This is aligned with the heightened fluctuations observed in the index values of these indices. It can be explained by the significant drop in crude oil prices which occurred between 2014 until 2020, where prices dropped around USD 20 per barrel, before resuming an uptrend to reach around USD 114 per barrel in May 2022. Compared to the two abovementioned fossil fuel-based indices, RSI values for global equity market indices fluctuated in a different fashion. For instance, while both S&P 500 and MSCI World equity indices had a rather exponential increase since 2010, they both experienced overbought levels around January 2018 and September 2021. To capture a more accurate picture of the performance of environmental markets, fossil fuel-based indices and global equity market indices, based on the RSI as a momentum indicator, a momentum-based strategy is carried out, with the total return, average return, risk, Sharpe, and Sharpe per trade reported.
All open positions are closed by the end of December 2022 to be able to measure the risk and return over the period under study. Several buy and sell orders are allowed, such that a buy order is not necessarily followed by a sell order and vice versa. Short selling is allowed. Three of the six regional-based EOs witnessed negative returns over the period 2009–2022, upon relying on the RSI trading strategy. The only exceptions were the Asia-Pacific excluding Japan EO index, the Europe EO index, and the Asia-Pacific EO equity index, with a total return of 29.17%, 28.05%, and 1.03%. This resulted in a Sharpe of 0.601, 0.399, and 0.004, respectively. After adjusting for number of trades, the Sharpe per trade values were 0.075, 0.067, and 0.002. The relatively higher positive returns observed in EO Asia-Pacific ex Japan and EO Europe can mostly be attributed to overbought (oversold) levels aligned with price falls (increases). All sector-based EOs performed poorly, with the exception of EO Renewable and Alternative Energy which reported a 93.25% return. This, however, came with an average risk value of 62.47%, resulting in a Sharpe of 0.737 and a Sharpe per trade of 0.184. The RSI model produces two (1) sell (buy) orders for the EO Renewable and Alternative Energy index, which were aligned with the momentum in the price movements of the index. Compared with the sector-based EOs, renewables and alternative energy had also the highest risk value, reflecting the increased uncertainty in investing in the index whose constituents are from energy generation and energy equipment sectors.
Global broad ET and EOs mostly underperformed with negative total returns, ranging from −86% to −209%, except for MSCI Global Alternative Energy which reported a total return of 226.78%. This resulted in an excess per unit of risk of 1.241 and a Sharpe per trade of 0.310. The relatively better performance of the MSCI alternative energy equity index is due to the ability of the RSI to capture to oversold signals in September 2011 and February 2013, two periods where the index was at its lowest level in the last decade, and also an overbought signal in late 2020, where the index started to drop, with negative annual returns in 2021 and 2022. It is important to note also that this index performance was accompanied with the highest average risk among all regional, sector, and broad environmental market-based indices of 90.86%.
Comparatively, the two fossil fuel-based indices both reported positive total returns of 10.32% and 285%, respectively, with however high average risk values of 260% and 92%. This resulted in Sharpe values of 0.793 and 0.773 for the S&P Oil and Gas Exploration and Production Industry, and NYSE Arca Oil. After adjusting for number of trades as a proxy for transaction costs, this led to Sharpe per trades of 0.079 and 0.097. The superior performance of these two fossil-based indices can be explained by the drop in crude oil prices since 2014 and its subsequent recovery in 2020, both of which were captured by the momentum indicator.
For global market equity indices, while both FTSE World Asia Pacific and FTSE Euro 100 reported positive total returns of 20% and 14%, they underperformed the fossil fuel-based indices. This can be explained by the lack of momentum in these global market indices, which were not tracked by the RSI indicator. The lack of momentum was further observed in the S&P 500 and MSCI World which reported negative average return of −35% and −14% if a 70/30 RSI strategy is adopted. In fact, both of these indices experienced a rather exponential increase from 2010 to 2020, before correcting in late 2021. In both cases, RSI only captured the overbought level correctly in 2021, with however false signals earlier. It is worth mentioning that FTSE 100 did not generate returns, since the model design restricts the overbought/oversold levels to be consistently 70/30 for all indices.

5.3. Trends in Equity Indices

To capture trend-based information in the selected equity markets, a double crossover strategy is implemented where the 50 EMA represents the faster EMA, and 100 EMA represents the slower EMA. All open positions are closed by the end of December 2022 to be able to measure the risk and return over the period under study. Several buy and sell orders are allowed, such that a buy order is not necessarily followed by a sell order and vice versa. Short selling is allowed. Results for environmental market indices are reported in Figure 4, with Figure 5 reporting the same for oil and gas industry and equity market indices.
In most of the 14 Eos markets, 100 EMA acted as a long-term support to the 50 EMA, suggesting that index values have mostly trended higher than their long-term averages. For regional-based Eos, only Asia-Pacific (excluding Japan) reported a positive average return of 10.9%, with a Sharpe of 0.103 and a Sharpe per trade of 0.051. The other five regional-based environmental markets indices did not observe any buying or selling signal under the double crossover moving average strategy, which is explained by the fact that the faster EMA tend to be higher than long run moving average of 100 months. For sector-based Eos, out of the four equity indices, only renewable and alternative energy reported a significant positive average return of 58%, with a Sharpe of 0.574 and a Sharpe per trade of 0.287. Similar to regional Eos, all other sector-based Eos did not witness any buy/sell signal under the double crossover strategy.
The 100 EMA acting as a long-term support observed above, is however less observed in fossil fuel-based and global market equity indices. 100 EMA acting as a long-term support was observed in the FTSE World Asia Pacific, FTSE Euro 100, S&P 500, and MSCI World equity indices. The 50 EMA was lower than its 100 EMA counterpart for the S&P Oil and Gas Exploration Industry and Production Industry index. This can be explained by the continuous drop in crude oil prices since 2014, which heavily impacted the constituents of the index, where the latter represent the largest publicly traded companies involved in the exploration and production of oil and gas around the world. Among global broad-based environmental market indices, both the MSCI Global Alternative Energy and EO 100 indices reported significant positive average returns of 65.8% and 79.1%, with an excess return per risk of 0.652 and 0.785, respectively. Compared to environmental markets indices, only NYSE Arca Oil reported a positive return among fossil fuel-based indices. The average monthly return was only 0.2%, average risk of 0.26%, resulting in a low Sharpe (Sharpe per trade) value of 0.013 (0.003). Similarly, among major global market equity indices, only the FTSE 100 experienced buying and selling signal under the double crossover moving average strategy, with an average loss of 4.3%. All other equity market indices reported no trade, due to the slower EMA not crossing over/under the faster EMA.

5.4. Volatility in Equity Indices

Table 3 summarizes the total return, average return, risk, Sharpe, and Sharpe per trade of using the Average True Range (ATR) as a volatility-based technical indicator. While Panel A reports the results for the selected regional- and sector-based EOs and ETs, Panel B reports findings for the fossil fuel-based indices and major global stock market indices. All regional-based EOs observed negative returns, with the exception of EO Europe which reported an average return of 58%, with an average risk value of 40%, resulting in a Sharpe of 1.44 and a Sharpe per trade of 0.18. The relatively poor performance of the volatility-based indicator can be explained by the index value not coming close enough to the lower and upper bands of the ATR to warrant a buy or sell signal. For sector-based EOs, two out of the four environmentally based indices reported positive gains. While the Renewable and Alternative Energy index has a positive average gain of 37% with a Sharpe value of 0.37, the Water Technology index witnessed an average return of 10% with a Sharpe of 0.56 and a Sharpe per trade of 0.09.
All globally based ET and EOs reported losses, with the exception of MSCI global alternative energy with an average return of 28%, risk of 36%, resulting in an excess per unit of risk of 0.77, and a Sharpe per trade of 0.19. Out of all EO indices, EO 100 had the biggest average loss of 33% with an average risk of 4%. Among the fossil fuel-based indices, the Oil and Gas exploration and production industry index reported a total return of 129%, with an excess return per unit of risk of 1.281. NYSE Arca Oil had a loss of 5% with a Sharpe of −0.061. Among global market equity indices, only FTSE 100 reported a positive gain, with an average gain of 2%, a standard deviation of 2.4%, resulting in a Sharpe value of 0.685 and a Sharpe per trade of 0.171. Similarly, among all global market equity indices, S&P 500 had the highest average loss of 34% with an average risk of 1%.
Although not reported here, graphical representations of the index values with the lower and upper ATR band values tend to show that index values are very close to the lower (upper) bands. However, a closer look reveals that the index values are in fact closer to the lower and upper ATR band value of the previous period. This suggests that the lower and upper ATR band values of the previous month can be a better candidate than using the current lower and upper ATR band values to generate buy/sell signals, as a volatility-based indicator. Thus, the volatility-based trading strategy is modified by adjusting for the horizontal difference between the previous lower/upper band values and the current index values, compared to the use of the vertical difference between the current lower/upper band values and the current index values.
Excluding the later index, fossil fuel-based indices outperformed all other indices. Specifically, the S&P Oil and Gas Exploration and Production industry index reported an average return of 224% and risk of 386%, resulting in an excess return per unit of risk of 0.58 and a Sharpe per trade of 0.06. The NYSE Arca Oil index also posted an average gain of 40%, with a Sharpe of 0.43 and a Sharpe per trade of 0.03. The performance of both of these fossil fuel-based indices improved with the use of ATR indicator, where buy/sell signals are based on the previous period’s lower/upper ATR band information, as opposed to current ATR bands. Moreover, similar to results reported in Table 3 for global market equity indices, only FTSE 100 reported positive gains of 10.21% with a standard deviation of 5.52%. This resulted in a significant Sharpe of 1.74 and a Sharpe per trade of 0.43. Although all of global stock market indices reported higher losses than in Table 3, the average losses were less in all instances, ranging from −7.37% to −31.13%.

5.5. Trading System

Compared to the earlier findings which are based on a trader relying on only one kind of information at a time, i.e., relying on the RSI to provide momentum, moving average crossovers to provide trend information, and the ATR to provide volatility-based information, a trading system is set up to allow for a trade to occur while considering any information based on momentum, trend, or volatility. Subsequently, the revised volatility indicator is implemented in a system which includes trend and momentum information. Specifically, it is assumed that the trader is able to use information coming from trend, momentum, or volatility information to make informed buy/sell decisions. Results are reported in Table 4. All regional-based EOs reported negative returns with EO USA bearing the highest loss of −285%, except for EO Asia-Pacific excluding Japan which reported an average gain of 2.34%, with an average risk of 18.81%. This resulted in a Sharpe of 0.59 and a Sharpe per trade of 0.06. The relatively poor performance of the U.S. Environmental Opportunities index can be attributed to the earlier findings backing the poor performance of the RSI and ATR technical indicators in capturing profitable buy and sell signals. All sector-based EOs reported negative losses ranging from −10% for the Renewable and Alternative Energy index to −163% for the Energy Efficiency index. Average returns for global-based ETs and EOs mostly worsened, with the exception of MSCI Global Alternative Energy which had an average gain of 39.57%, risk of 50.53%. This resulted in a positive Sharpe value of 0.77, with however a Sharpe per trade 0.08.

6. Discussion of Results and Policy Implications

The MSCI Global Alternative Energy index, which includes developed and emerging market large, mid, and small cap companies that derive 50% or more of their revenues from products and services in Alternative energy, witnessed superior adjusted risk-based return performance in momentum, trends, and volatility-based models. At first glance, this suggests that sustainable investments perform better than global stock market and oil-based equity investments. These findings are in line with existing literature where the MSCI’s 2021 Global Institutional Investor Survey reported an inflow of funds for ESG-based funds as opposed to non-ESG equity funds. The superior performance accompanied with the heightened risk in the MSCI global alternative energy index relative to traditional equity market indices is also in line with earlier studies which support that ESG risks can be rewarded with higher returns [45]. The performance of EO Europe is consistent with existing literature where an analysis of 1452 firms from 16 different European countries reported that companies with better ESG performance show better returns [48].
However, with the exception of EO Europe as a regional EO under volatility-based information, and EO Renewable and Alternative Energy as a sector EO, other EOs performed poorly. The overall results of this study, supporting the underperformance of other environmental markets indices relative to fossil fuel-based and equity market indices, have some important implications to the investor, investment institutions and government bodies. To the investor, this signals that fossil fuel-based equity investments in indices such as Oil and Gas Exploration and Production industry can still outperform most environmental market indices. This suggest to the investor that the added risks of sustainable equity investments compared to traditional equity investments have not consistently been rewarded. This contradicts previous literature which suggests various investments firms missed out by investment on corporations with negative impact on climate [5]. This suggests that the lack of investors’ interest is not susceptible to immediately disrupt the business model of industries which rely heavily on fossil-fuels. This is line with previous studies who find that industries linked with energy are positively sensitive to oil price changes [7,8,9]. The superior performance of fossil fuel-based equiy indices in the trading system, where the investor can act on momentum, volatility, and trend information simultaneously, suggests that companies with high carbon footprints can be made responsible for damaging the environment and be subject to financial penalties, but still return a superior risk adjusted return performance to shareholders. It signals to the investment industry that sector- and regional-based EOs and ETs still have to perform consistently overtime to gain further interests from investors.
Further, the performance of fossil fuel-based indices also inform government and regulatory bodies of the need to continue to monitor the impact of crude oil on asset prices. Sector- and regional-based EOs still have to consistently demonstrate better performance over time to attract more governmental green-based investment initiatives globally. Further, the lack of interest in sustainable equity investments, suggest the need for more policy actions from government bodies to gradually shift investments from non-renewable to renewables. Alternatively stated, this means there is a need for states to provide more support and implementation of rigorous actions in favor of greener sustainable investments. For instance, policy actions can be in the form of national-based initiatives which are geared to enhance transparency in the market for sustainable investment products, to prevent greenwashing, and to increase transparency around sustainability claims made by different corporations.

7. Conclusive Remarks

There has been a noticeable increase in global clean energy investments as part of the decarbonization process. Yet, the latest global forum on climate change, the Conference of the Parties to the United Nations Framework Convention on Climate Change (COP27) confirmed that globally, nations are still short of meeting the increased demand for energy services sustainably. Attempts from Europe to reduce its dependence on Russia’s oil, gas, and coal supplies following the Russian-Ukraine crisis, global inflationary pressures, and volatile energy prices, all add to the existing pressures on investors to consider green energy investments, especially in less attractive emerging markets. The present study helps close the gap in the literature, by shedding some light into environmental market indices which have gained increased interest in the last decade. Specifically, this study analyzes the performance of sustainable energy equity investments, with a focus on environmental markets, by assessing the performance of trading strategies which are based on the trend, direction, and volatility of environmental market equity indices; and by comparing how the performance of sustainable equity investments differ from both oil-based and traditional global equity index-based investments.
To assess performance, technical analysis trading strategies capturing market momentum, trends, and volatility information are implemented. This paper assesses each strategy individually and include a scenario, where the trader can make informed decisions based on momentum, trend, or volatility information. Overall findings support that a momentum-based strategy performed best for the MSCI Global Alternative Energy index, with the highest excess return per unit of risk, followed by fossil fuel-based indices. In the same vein, a trend-based strategy worked best for the MSCI Global Alternative Energy and EO 100 indices. Using a volatility-based strategy, the highest Sharpe was observed with EO Europe, followed by the Oil and Gas Exploration and Production industry, and MSCI Global Alternative Energy indices, with most other markets reporting lower or negative Sharpe values. Last but not least, a trader relying simultaneously on momentum, trend or volatility information would benefit from such a strategy with positive returns in the MSCI Global Alternative Energy, S&P Oil and Exploration and Production industry, NYSE Arca Oil, and FTSE 100 indices only, where the later reported the highest Sharpe value, compared to all other strategies. Although the FTSE 100 reported the highest excess return per unit of risk, the MSCI Global Alternative Energy positioned itself among the best three indices when pursuing either momentum, trend, or volatility-based investment strategies. It is also worth mentioning the performance of the S&P Oil and Gas Exploration and Production Industry index, as a fossil fuel-based index, especially when relying on momentum and volatility data in decision making. Except for EO Europe as a regional EO under volatility-based information, and EO Renewable and Alternative Energy as a sector EO, other EOs performed poorly.
In this study, we have assessed the performance of trading strategies based on technical analysis tools such as the Relative Strength Index (RSI), Moving Averages, and Average True Range (ATR), whereas other indicators could have been used such as ADX or MACD. The results obtained by our research can potentially inspire further studies. Our analysis may be extended to investigate the performance of sustainable energy equity investments, with focus on environmental markets during major economic and financial shocks, especially during turbulent time-periods, for example, during global financial crises, COVID-19 pandemic and Russian invasion of Ukraine. Another future area of research could be to analyze the performance of combined portfolio of environmental market equity indices with hedging instruments to protect them against the risks transmitted between sustainable energy equity investments.

Author Contributions

Conceptualization, I.G.; methodology, I.G. and F.K.; software, I.G., F.K., O.S.; validation, A.M. (Anita Mirchandani), A.M. (Adham Makki); formal analysis, N.G.; resources, I.G.; data curation, I.G.; writing—original draft preparation, I.G.; writing—review and editing, F.K.; visualization, O.S. and A.M. (Adham Makki); project administration, I.G.; All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Data Availability Statement

Data can be made available upon request.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. Environmental markets, fossil-fuel, and global stock market indices. Source: FactSet, FTSE Russell, MSCI, and SPGlobal.
Figure 1. Environmental markets, fossil-fuel, and global stock market indices. Source: FactSet, FTSE Russell, MSCI, and SPGlobal.
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Figure 2. Relative Strength Index of Environmental Markets and indices. Note: The left-hand side verti-cal axis represents the RSI values (represented by the blue line), with the dotted lines rep-resenting overbought (70) and oversold (30) levels. The right-hand side vertical axis repre-sents the index values (represented by the green line) over the period October 2010–December 2022. Source: author.
Figure 2. Relative Strength Index of Environmental Markets and indices. Note: The left-hand side verti-cal axis represents the RSI values (represented by the blue line), with the dotted lines rep-resenting overbought (70) and oversold (30) levels. The right-hand side vertical axis repre-sents the index values (represented by the green line) over the period October 2010–December 2022. Source: author.
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Figure 3. Relative Strength Index of Oil and Gas industry and equity market indices. Note: The left-hand side vertical axis represents the RSI values (represented by the blue line), with the dotted lines representing overbought (70) and oversold (30) levels. The right-hand side vertical axis repre-sents the index values (represented by the green line) over the period October 2010–December 2022. Source: author.
Figure 3. Relative Strength Index of Oil and Gas industry and equity market indices. Note: The left-hand side vertical axis represents the RSI values (represented by the blue line), with the dotted lines representing overbought (70) and oversold (30) levels. The right-hand side vertical axis repre-sents the index values (represented by the green line) over the period October 2010–December 2022. Source: author.
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Figure 4. Trends in Environmental Markets indices. Note: displays 50 EMA and 100 EMA of Environmental Opportunities (EO) and Environmental Technology (ET) equity market indices using monthly data for the period (2010–2022). A cross-over (cross-under) of the 50 EMA (100 EMA) represents a buy (sell) signal.
Figure 4. Trends in Environmental Markets indices. Note: displays 50 EMA and 100 EMA of Environmental Opportunities (EO) and Environmental Technology (ET) equity market indices using monthly data for the period (2010–2022). A cross-over (cross-under) of the 50 EMA (100 EMA) represents a buy (sell) signal.
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Figure 5. Trends in Oil and Gas industry and equity market indices. Note: displays 50 EMA and 100 EMA of fossil fuel-based equity market indices and global equity market indices, using monthly data for the period (2010–2022). A cross-over (cross-under) of the 50 EMA (100 EMA) represents a buy (sell) signal.
Figure 5. Trends in Oil and Gas industry and equity market indices. Note: displays 50 EMA and 100 EMA of fossil fuel-based equity market indices and global equity market indices, using monthly data for the period (2010–2022). A cross-over (cross-under) of the 50 EMA (100 EMA) represents a buy (sell) signal.
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Table 1. Environmental Markets, Oil and Global Equity Indices.
Table 1. Environmental Markets, Oil and Global Equity Indices.
IndexSector/Region
Environmental Markets Index FamilyFTSE EO Energy Efficiency Energy Efficiency sector
FTSE EO Water Technology Water Technology sector
FTSE EO Waste and Pollution Control Technology Waste and Pollution Control Technology sector
FTSE EO Renewable and Alternative Energy Renewable and Alternative Energy sector
FTSE EO Europe Europe
FTSE EO U.K.U.K.
FTSE EO U.S.U.S.
FTSE EO Asia-Pacific Asia-Pacific
FTSE EO Japan Japan
FTSE EO Asia-Pacific ex Japan Asia-Pacific excluding Japan
FTSE EO 100 Global
FTSE EO All Share Global
FTSE ET50 Global
MSCI Global Alternative Energy Global
Oil Industry IndicesNYSE Arca Oil IndexGlobal
S&P Oil and Gas Exploration and ProductionUS
Global Equity IndicesMSCI World World
S&P 500U.S.
FTSE Euro 100 Europe
FTSE 100U.K.
FTSE World Asia PacificAsia Pacific
Source: FactSet, FTSE Russell, MSCI, and SPGlobal.
Table 2. Descriptive statistics.
Table 2. Descriptive statistics.
Markets MeanSDMedianQ1Q3SkewnessKurtosis
Environmental Markets Index FamilyEO Asia-Pacific x Japan273.0249.70261.69239.81287.571.291.16
EO Japan313.9491.82301.46231.60382.210.45−0.79
EO Asia-Pacific302.4975.09282.25241.46346.870.75−0.15
EO USA473.10252.41384.11265.76553.381.080.16
EO U.K.536.08124.16561.87478.15610.59−0.35−0.14
EO Europe256.1170.83236.73205.32283.731.150.67
EO Renewable and Alternative Energy223.7958.97208.72178.96246.380.93−0.01
EO Waste and Pollution Control Technology482.23144.26455.79358.41586.760.32−0.79
EO Water Technology502.37172.42476.96348.33605.040.49−0.60
EO Energy Efficiency301.84134.09255.77209.98333.851.270.66
ET 50204.5693.69169.86151.03205.121.511.14
EO All Share342.61131.71296.01243.83387.121.050.19
MSCI Global Alternative Energy63.9723.3954.9648.3283.280.68−0.58
EO 100331.17134.45280.64231.35372.461.130.30
Oil Industry IndicesS&P Oil and Gas Exploration and Production Select Industry6164.342452.125795.134601.667978.140.31−0.37
NYSE Arca Oil Index1234.39237.591229.101096.241366.66−0.080.56
Global Market Equity IndicesWorld Asia Pacific199.0832.53193.21177.73218.680.66−0.13
FTSE 1009338.00925.049385.938740.979923.630.01−0.06
FTSE Euro 1001157.31154.641155.621046.281245.610.280.02
S&P 5002363.561001.282103.841440.672941.760.65−0.51
MSCI World Index1862.14558.921739.501388.622178.350.64−0.36
Note: Table 2 captures the descriptive statistics for select environmental markets equity indices—Environmental Opportunities (EO) and Environmental Technologies (ET), fossil fuel-based equity indices, and traditional global market equity indices. Selected EO indices are EO Asia-Pacific x Japan, EO Japan, EO Asia-Pacific, EO USA, EO U.K., EO Europe, EO Renewable and Alternative Energy, EO Waste and Pollution Control Technology, EO Water Technology, EO Energy Efficiency, ET 50, EO All Share, MSCI Global Alternative Energy, and EO 100. Fossil fuel-based indices are S&P Oil and Gas Exploration and Production and NYSE Arca Oil Index. Selected global market equity indices are World Asia Pacific, FTSE 100, FTSE Euro 100, S&P 500, and the MSCI World Index. Source: FactSet, FTSE Russell, MSCI, and SPGlobal.
Table 3. Volatility-based Performance.
Table 3. Volatility-based Performance.
Panel ATotal
Return
Average
Return
RiskSharpe Sharpe
per Trade
Regional-based EOs
EO Asia-Pacific x Japan−6%−3%8%(0.47)(0.12)
EO Japan−49%−12%3%(5.09)(0.64)
EO Asia-Pacific−15%−4%6%(0.68)(0.09)
EO USA−89%−22%4%(5.39)(1.35)
EO U.K.−9%−5%1%(4.69)(1.17)
EO Europe234%58%40%1.440.18
Sector-based EOs
EO Renewable and Alternative Energy37%37%100%0.370.18
EO Waste and Pollution Control Technology−79%−16%4%(4.04)(0.40)
EO Water Technology29%10%16%0.560.09
EO Energy Efficiency−96%−32%4%(8.98)(1.50)
Global broad-based ET and EOs
ET 50−36%−12%22%(0.58)(0.10)
EO All Share−65%−16%4%(4.34)(0.54)
EO 100−131%−33%4%(9.29)(1.16)
MSCI Global Alternative Energy56%28%36%0.770.19
Panel BTotal
Return
Average
Return
RiskSharpeSharpe
per Trade
Fossil fuel-based indices
S&P Oil and Gas Exploration and Production Industry129%129%100%1.2810.641
NYSE Arca Oil −5%−5%100%(0.061)(0.030)
Global market equity indices
FTSE World Asia Pacific−28%−28%1.000(0.282)(0.141)
FTSE 100 5%2%0.0240.6850.171
FTSE Euro 100 −56%−28%0.081(3.559)(0.445)
S&P 500 −67%−34%0.010(33.281)(8.320)
MSCI World −78%−20%0.048(4.212)(0.527)
Note: Table 3 summarizes the total return, average return, risk, Sharpe, and Sharpe per trade upon implementing the Average True Range (ATR) as a volatility-based technical indicator. Panel A provides the results for regional and sector EOs and ETs, and Panel B provides the same for fossil fuel-based indices and major global equity market indices. Standard deviation is used to calculate risk. Sharpe is estimated as the excess return per unit of risk, with the Sharpe per trade adjusting the Sharpe to the number of trades, as a proxy adjustment to transaction costs.
Table 4. Performance based on a trading system.
Table 4. Performance based on a trading system.
Panel ATotal
Return
Average
Return
RiskSharpeSharpe
per Trade
Regional-based EOs
EO Asia-Pacific x Japan11.72%2.34%18.81%0.090.01
EO Japan−157.81%−19.73%27.59%(0.74)(0.05)
EO Asia-Pacific−60.72%−10.12%24.66%(0.44)(0.04)
EO USA−284.66%−35.58%22.64%(1.60)(0.11)
EO U.K.−124.02%−20.67%23.33%(0.91)(0.08)
EO Europe−118.93%−10.81%23.57%(0.48)(0.02)
Sector-based EOs
EO Renewable and Alternative Energy−10.64%−2.66%19.94%(0.16)(0.02)
EO Waste and Pollution Control Technology−45.97%−5.75%20.93%(0.30)(0.02)
EO Water Technology−86.51%−8.65%20.75%(0.45)(0.02)
EO Energy Efficiency−162.24%−23.18%31.86%(0.75)(0.05)
Global broad-based ET and EOs
ET 50−164.86%−32.97%20.13%(1.67)(0.17)
EO All Share−152.77%−25.46%18.74%(1.39)(0.12)
EO 100−89.89%−17.98%15.52%(5.83)(0.58)
MSCI Global Alternative Energy197.87%39.57%50.53%0.770.08
Panel BTotal
Return
Average
Return
RiskSharpeSharpe
per Trade
Fossil fuel-based indices
S&P Oil and Gas Exploration and Production Industry1119.87%223.97%386.13%0.580.06
NYSE Arca Oil 282.44%40.35%93.55%0.420.03
Global market equity indices
FTSE World Asia Pacific−86.42%−17.28%9.71%(8.96)(0.90)
FTSE 100 20.42%10.21%5.52%3.590.90
FTSE Euro 100 −22.12%−7.37%34.27%(0.66)(0.11)
S&P 500 −311.27%−31.13%24.60%(12.68)(0.63)
MSCI World −85.66%−9.52%23.08%(3.74)(0.21)
Note: Table 4 summarizes the performance upon implementing a trading system based on momentum, trends, and volatility information. Panel A (B) provides results for regional and sector EOs and ETs (fossil fuel-based indices and major global equity market indices).
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Gurrib, I.; Kamalov, F.; Starkova, O.; Makki, A.; Mirchandani, A.; Gupta, N. Performance of Equity Investments in Sustainable Environmental Markets. Sustainability 2023, 15, 7453. https://doi.org/10.3390/su15097453

AMA Style

Gurrib I, Kamalov F, Starkova O, Makki A, Mirchandani A, Gupta N. Performance of Equity Investments in Sustainable Environmental Markets. Sustainability. 2023; 15(9):7453. https://doi.org/10.3390/su15097453

Chicago/Turabian Style

Gurrib, Ikhlaas, Firuz Kamalov, Olga Starkova, Adham Makki, Anita Mirchandani, and Namrata Gupta. 2023. "Performance of Equity Investments in Sustainable Environmental Markets" Sustainability 15, no. 9: 7453. https://doi.org/10.3390/su15097453

APA Style

Gurrib, I., Kamalov, F., Starkova, O., Makki, A., Mirchandani, A., & Gupta, N. (2023). Performance of Equity Investments in Sustainable Environmental Markets. Sustainability, 15(9), 7453. https://doi.org/10.3390/su15097453

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