Ranking Potential Renewable Energy Systems to Power On-Farm Fertilizer Production
Abstract
:1. Introduction
- The introduction of a hybrid model (PESTEL, Fuzzy AHP, and Extended TODIM) for ranking renewable energy resources in Iran,
- The determination of the suitable sub-criteria for the evaluation of renewable energy resources for fertilizer production in Iran (though it could be used for any country).
- The determination of the suitable renewable energy resources for powering farmlands in Iran.
- The proposition of a renewably-powered system for nitrogen fertilizer production in farmlands for the first time in Iran.
2. Green Production Pathway
2.1. Chemical Fertilizer
2.2. Ammonia Synthesis
2.3. Hydrogen
2.4. Water Electrolysis
2.5. General Scheme of On-Site Fertilizer Production in Farmlands
3. Study Area
4. Materials and Methods
4.1. Model Description
- The choice of the suitable sub-criteria for the selection of renewable energy resources for on-site fertilizer production in Iranian farmlands. For this purpose, the experts received a questionnaire including a summary of the study and the methods used. They were then asked to select appropriate sub-criteria from the sub-criteria obtained from the literature, and the parameters that they consider important. They also evaluated options that did not have available data or could not be measured when the sub-criteria were identified. It should be noted that if the sub-criteria selected by the experts were interdependent, they were removed, because, in the AHP method, there can be no interrelation between the decision criteria (sub-criteria).
- Making pairwise comparisons between criteria to determine their weights by using linguistic variables. To this end, the experts received a questionnaire for pairwise comparisons and, after completing it, the paired comparisons matrix was then obtained.
4.2. Analyzed Options
4.2.1. Solar Energy
4.2.2. Biomass Energy
4.2.3. Wind Energy
4.2.4. Solar Thermal Energy
4.3. Criteria
PESTEL Analysis
- C1.1. Political Acceptance: This sub-criterion represents the level of satisfaction of policymakers and authorities with renewable energy technologies, and how accepted are these technologies among these groups. This acceptance can affect the length of the projects and the support they receive, including logistic support, from the political domain. In the evaluation based on this sub-criterion, an option is considered suitable if the related technology is consistent with national policies.
- C1.2. Political Benefit: This sub-criterion evaluates the political benefits of a resource, such as its contribution to national energy security and political uses, etc.
- C1.3. Sanction: This sub-criterion considers the impact of sanctions on renewable energy sources. With the imposition of sanctions, some foreign companies may choose to avoid doing business with domestic entities, which may make it more difficult to access the equipment and facilities needed to build and maintain renewable power plants. Therefore, those options whose components are being produced domestically are preferable.
- C2.1. Capital Cost: This cost is the most typically considered economic factor in renewable energy assessments. In this study, the capital cost considered for the on-site production of chemical fertilizer (NH3) in farmlands was the cost of building a plant (including the purchase of technical equipment and technologies), road construction costs, installation costs, land-related costs, building-related costs, and the costs of engineering services.
- C2.2. Operation and Maintenance (OM) cost: This cost consists of two components: (a) operating costs, which include wages and the cost of the goods and services needed for the operation; (b) maintenance costs, which refer to the costs incurred to maintain and repair the system, with the goal of increasing its lifespan and avoiding obstacles to the project’s success.
- C3.1. Local welfare: This represents the contribution of the energy system to the improvement of local welfare, which can manifest as improved quality of life and increased local incomes.
- C3.2. Social acceptance: This sub-criterion represents the public acceptance of the energy system in the society.
- C3.3. Investors’ awareness and knowledge: The more informed the investors are about renewable energy technology and its possible uses in agriculture, the more desirable that option will be.
- C4.1. Safety of the Energy System: This reflects the safety of workers and the rate of fatal accidents in the process of building, launching and operating a particular renewable energy system. In this sub-criterion, the rate of non-fatal accidents is expressed qualitatively [45].
- C4.2. Efficiency: This refers to the useful energy obtained from the resources. This variable is usually expressed by the efficiency coefficient, which is the ratio of output energy to input energy.
- C4.3. Reliability: This is determined by the frequency of the interruptions in the operation of the renewable energy resource, and reflects its stability and predictability.
- C4.4. Technical Maturity: This sub-criterion refers to the advancement of the renewable energy technology, and whether it can be practically used at regional, national, and international levels.
- C4.5. Feasibility: This indicates the ease of the implementation of the renewable energy system. This sub-criterion can be estimated based on the number of times the option has been successful in the tests.
- C4.6. Capacity: This is the amount of electrical energy that the renewable energy resource will produce over a given period of time, divided by the maximum amount of energy that a renewable plant can produce.
- C4.7. Resource Availability: This sub-criterion represents the availability of the renewable energy. Naturally, an option with higher availability is more desirable (e.g., the availability of good sunlight, good wind speed, large amounts of organic waste, etc.).
- C4.8. Ease of Implementation in farmlands: The ease of the construction and operation of the system is of essential importance for the launching of a renewably-powered fertilizer production system in a farmstead. Therefore, the easier it is to build and operate a renewable system, the better that option will be.
- C5.1. Emission Reduction: Energy generation facilities usually contribute to pollution not only directly but also indirectly through the carbon footprint of the related construction, transportation, operation, maintenance and demolition activities. Therefore, the options with lower total emissions are more desirable. This sub-criterion is measured in terms of the equivalent emissions of CO2 as the metric of its contribution to global warming, air pollution, and acid rain [16].
- C5.2. Human Toxicity: This sub-criterion concerns the release of toxic substances into the human environment. However, it does not cover the health risks of workplaces. The factors of human toxicity potential are determined by USELCA (The Uniform System for Evaluation of Substances). It is typical to use 1, 4-dichlorobenzene equivalents per kg of emissions as the metric of the human toxicity of substances [17].
- C6.1. Legal Regulation of Activities: This sub-criterion considers the legal provisions and government support concerning renewable energy activities. The lower the legal barriers to using the renewable energy resource, the better the option.
- C6.2. Legal Incentives: This sub-criterion refers to the impact of energy policies and legal incentives regarding the use of renewable energies for the production of fertilizer on the decisions of farmers and investors.
4.4. Fuzzy AHP
4.5. MCDM Method
4.5.1. Extended TODIM
- The crisp number: if xij is a crisp number xij = x’, its cumulative distribution function is:
- Interval number: if xij is an interval number and xij = = [xijl, xiju] is an arbitrary value in the interval [xijl, xiju], its cumulative distribution function is:
- Fuzzy number: if xij is a triangular fuzzy number, is then considered to be a unique random variable, and its cumulative distribution function is:
- -
- For crisp numbers, we have:
- -
- For interval numbers, we have:
- -
- For fuzzy numbers, we have:
5. Results
5.1. Weight Determination
5.2. Results of the Extended TODIM
5.3. Sensitivity Analysis
- Scenario 1: Changing the weight of the political criterion.
- Scenario 2: Changing the weight of the economic criterion.
- Scenario 3: Changing the weight of social criterion.
- Scenario 4: Changing the weight of the technical criterion.
- Scenario 5: Changing the weight of the environmental criterion.
- Scenario 6: Changing the weight of the legal criterion.
5.4. Comparative Analysis
6. Conclusions
- It was found that the most important criteria for choosing the suitable renewable resources for on-site fertilizer production in Iranian farmlands are the technological (0.4888), economical (0.1287), and social (0.11) criteria, in that order.
- The results of the rankings showed that the ideal option for the production of ammonia and fertilizers in Iranian farmlands is photovoltaic energy. This result can be attributed to the excellent solar energy potential of Iran, which has 300 sunny days a year on average, and average solar radiation of 2200 kWh/m2. Harvesting even 1% of the country’s total solar energy potential at 10% efficiency would provide about 9 million megawatts of electricity per day. Furthermore, it has been estimated that the real amount of annual sunlight hours in Iran is more than 2800 h. Solar energy is suitable for most parts of Iran, especially the central part.
- Wind energy, solar thermal energy, and biomass energy were ranked second to fourth, respectively.
- Wind energy is available in the north (the Manjil region), the northeast (the Binalood region), and the southeast (the Zabol region) of Iran. Therefore, we suggest the use wind energy for small-scale renewably-powered ammonia production only for these regions, which have very low risk.
- The sensitivity analysis showed that, in all of the criteria weighting scenarios, photovoltaic energy and wind energy were the top two priorities.
- The results of the comparative analysis showed that the compared methods produced the same results as the main method of the study.
- Investors, farmers and the government can use the results of this research to assess the risk factors and reliability of the resources.
- Using the method of this paper to evaluate renewable energy resources in other regions.
- Using the method to rank and prioritize other options.
- Comparing the results of other methods with the results of this study.
- Using other criteria for the ranking and prioritization.
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Appendix A
S.C. | C1.1 | C1.2 | C1.3 | C2.1 | C2.2 | C3.1 | C3.2 | C3.3 | C4.1 | C4.2 | C4.3 | C4.4 | C4.5 | C4.6 | C4.7 | C4.8 | C5.1 | C5.2 | C6.1 | C6.2 |
C1.1 | 1 | VL−1 | L−1 | H−1 | L−1 | M−1 | M−1 | VL | L−1 | VH−1 | H−1 | M−1 | VL−1 | M−1 | H−1 | L−1 | H−1 | VL−1 | M−1 | VL |
C1.2 | VL | 1 | L | L−1 | VL−1 | VL−1 | M−1 | VL | M−1 | L−1 | VL−1 | VL | VL−1 | L−1 | H−1 | M−1 | L−1 | L−1 | VL | M−1 |
C1.3 | L | L−1 | 1 | L−1 | H−1 | L−1 | VL−1 | H | VL | L−1 | H−1 | L−1 | VL−1 | H−1 | VH−1 | H | L−1 | L−1 | L−1 | VL−1 |
C2.1 | H | L | L | 1 | VL−1 | L | H | VL | VL−1 | H−1 | L−1 | H | L−1 | L | H−1 | L | H−1 | L−1 | L | H |
C2.2 | L | VL | H | VL | 1 | VL−1 | M−1 | L−1 | L | H−1 | VH−1 | H | L−1 | M−1 | H−1 | L | H−1 | M−1 | H | H |
C3.1 | M | VL | L | L−1 | VL | 1 | L−1 | VL | L | L−1 | L−1 | L | H−1 | H−1 | VH−1 | L | VH−1 | L−1 | L−1 | M−1 |
C3.2 | M | M | VL | H−1 | M | L | 1 | L | L | H−1 | H−1 | L−1 | H−1 | L−1 | H−1 | L−1 | L−1 | VL−1 | H−1 | H−1 |
C3.3 | VL−1 | VL−1 | H−1 | VL−1 | L | VL−1 | L−1 | 1 | VL | L−1 | VL−1 | VL−1 | L−1 | VL | H−1 | L | H−1 | L−1 | H−1 | L |
C4.1 | L | M | VL−1 | VL | L−1 | L−1 | L−1 | VL−1 | 1 | L−1 | M−1 | L | VL−1 | L−1 | H−1 | H | H−1 | L−1 | L−1 | M−1 |
C4.2 | VH | L | L | H | H | L | H | L | L | 1 | VL | H | L−1 | L−1 | H−1 | VH | VL−1 | M−1 | VL−1 | H |
C4.3 | H | VL | H | L | VH | L | H | VL | M | VL−1 | 1 | H | M−1 | H−1 | VH−1 | H | L−1 | L−1 | M−1 | L |
C4.4 | M | VL−1 | L | H−1 | H−1 | L−1 | L | VL | L−1 | H−1 | H−1 | 1 | H−1 | H−1 | VH−1 | VL | H−1 | H−1 | L−1 | L |
C4.5 | VL | VL | VL | L | L | H | H | L | VL | L | M | H | 1 | H | M−1 | L | M−1 | VL | VL−1 | VL |
C4.6 | M | L | H | L−1 | M | H | L | VL−1 | L | L | H | H | H−1 | 1 | H−1 | L | VL−1 | M−1 | VL−1 | M−1 |
C4.7 | H | H | VH | H | H | VH | H | H | H | H | VH | VH | M | H | 1 | VH | M−1 | VL | L | H |
C4.8 | L | M | H−1 | L−1 | L−1 | L−1 | L | L−1 | H−1 | VH−1 | H−1 | VL−1 | L−1 | L−1 | VH−1 | 1 | VH−1 | H−1 | H−1 | VL−1 |
C5.1 | H | L | L | H | H | VH | L | H | H | VL | L | H | M | VL | M | VH | 1 | L | M−1 | L |
C5.2 | VL | L | L | L | M | L | VL | L | L | M | L | H | VL−1 | M | VL−1 | H | L−1 | 1 | VL | L |
C6.1 | M | VL−1 | L | L−1 | H−1 | L | H | H | L | VL | M | L | VL | VL | L−1 | H | M | VL−1 | 1 | L |
C6.2 | VL−1 | M | VL | H−1 | H−1 | M | H | L−1 | M | H−1 | L−1 | L−1 | VL−1 | M | H−1 | VL | L−1 | L−1 | L−1 | 1 |
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Process | Required Energy (kWh/kg NH3) |
---|---|
Electrolysis | 8.47 |
Air separation | 0.098 |
Synthesis | 3.1 |
Main D.C | NO. | Sub-Criteria | References |
---|---|---|---|
Political | 1 | Political acceptance | [45,47,50] |
2 | Compatibility with the national energy policy | [16,45,50] | |
3 | Political benefit | Expert inputs | |
4 | National energy security | [1] | |
5 | Sanction | Expert inputs | |
6 | Policy applicability | [22] | |
Economic | 1 | Capital Cost | [1,16,45,46,47,49,52,59,60] |
2 | Operation and maintenance (OM) Cost | [1,16,45,46,47,49,52,59,60] | |
3 | Payback time | [16,47,49,50] | |
4 | R & D Cost | [1,45] | |
5 | Electricity cost | [1,49,51,61,62] | |
6 | Costs of grid connection | [46] | |
7 | Technology Cost | [16] | |
8 | Energy Cost | [45,63] | |
9 | Market maturity | [45,64] | |
10 | Operational life | [45,47] | |
11 | Availability of funds | [50] | |
12 | National economic development | [45] | |
13 | Market potential | [22,49,60] | |
14 | Security of supply | [46] | |
Social | 1 | Job creation | [1,16,44,45,46,49,51,59] |
2 | Social benefit | [1,16,47,49] | |
3 | Local welfare | Expert inputs | |
4 | Accident fatalities | [46] | |
5 | Social acceptance | [1,16,22,44,47,49,50,51,45,61,62,64] | |
6 | Maintain leading position as energy supplier | [45] | |
7 | Investors’ awareness and information | Expert inputs | |
8 | Human health | [10,32,45,46] | |
Technology | 1 | Safety of energy system | [45,47] |
2 | Safety in covering peak demand | [45,46] | |
3 | Stability | [59] | |
4 | Efficiency | [1,16,22,45,49,50,51,61,64] | |
5 | Reliability | [1,16,22,44,45,47,49,50,59,60,62] | |
6 | Resource availability | [1,16,45,49] | |
7 | Risk | [50] | |
8 | Technical maturity | [1,16,22,44,45,47,49,50,51,61,64] | |
9 | Feasibility | [50,63] | |
10 | Capacity | [16,47,50,51,61,62] | |
11 | Load factor | [46] | |
12 | Deployment time | [1,45,63] | |
13 | Durability of technology | [62] | |
14 | Expert human resource | [1,45] | |
15 | Future installed capacity | [61] | |
16 | Ease of decentralization | [45] | |
17 | Ease of running on farmland | Expert inputs | |
18 | Electricity generation | [44,61] | |
Environmental | 1 | Land requirement | [1,16,44,45,49,50,51,65] |
2 | Emission reduction | [1,44,45,46,47,50,51,60,65] | |
3 | Impact on environment | [16,47,49,50,45,59] | |
4 | Need for waste disposal | [45,47] | |
5 | Disturbance ofecological balance | [45] | |
6 | Climate change | [10,62] | |
7 | Pollution emission | [16,61,62] | |
8 | Impact on amenity | [44] | |
9 | Global warming | [22,30] | |
10 | Human toxicity | [10,22,30] | |
11 | Ecosystem quality | [10] | |
Legal | 1 | Legal regulation of activities | [62] |
2 | Governmental support | [61] | |
3 | Legal incentives | [16] |
Main Criteria | NO. | Sub-Criteria | Unit | Type | Data Reference |
---|---|---|---|---|---|
Political | 1 | Political acceptance | Qualitative (1–5) | Positive | Experts inputs |
2 | Political benefit | Qualitative (1–5) | Positive | Experts inputs | |
3 | Sanction | Qualitative (1–5) | Negative | Ministry of Energy of Iran [42] | |
Economic | 1 | Capital Cost | USD/kW | Negative | [1,41,45,49,66,67,68] |
2 | Operation and maintenance (OM) Cost | USD/kW/y | Negative | [1,49,51,67] | |
Social | 1 | Local welfare | Qualitative (1–5) | Positive | Experts inputs |
2 | Social acceptance | Qualitative (1–5) | Positive | Experts inputs | |
3 | Investors’ awareness and information | Qualitative (1–5) | Positive | Experts inputs | |
Technological | 1 | Safety of energy system | Qualitative (1–5) | Positive | Experts inputs |
2 | Efficiency | % | Positive | [22,45,51,67] | |
3 | Reliability | Qualitative (1–5) | Positive | [44,47,63], Experts inputs | |
4 | Technical maturity | Qualitative (1–5) | Positive | [45,49], Experts inputs | |
5 | Feasibility | Qualitative (1–5) | Positive | [50,63], Experts inputs | |
6 | Capacity | % | Positive | [68] | |
7 | Resource availability | kWh/m2/y | Positive | [45,49] | |
8 | Ease of running on farmland | Qualitative (1–5) | Positive | Experts inputs | |
Environmental | 1 | Emission reduction | g Co2eq/kWh | Negative | [44,45] |
2 | Human toxicity | g 1,4-DBeq/ kWh | Negative | [68] | |
Legal | 1 | Legal regulation of activities | Qualitative (1–5) | Negative | Experts inputs |
2 | Legal incentives | Qualitative (1–5) | Positive | Experts inputs |
Linguistic Nariable | Fuzzy Number for F-AHP | Fuzzy Number for Extended TODIM | |
---|---|---|---|
i to j Response | Inverse of Fuzzy Number (j to i) | ||
Very Low (VL) | (1, 1, 1) | (1, 1, 1) | (0, 0, 0.25) |
Low (L) | (1, 1, 3) | (1/3, 1, 1) | (0, 0.25, 0. 5) |
Medium (M) | (1, 3, 5) | (1/5, 1/3, 1) | (0.25, 0.5, 0.75) |
High (H) | (3, 5, 7) | (1/7, 1/5, 1/3) | (0.5, 0.75, 1) |
Very High (VH) | (5, 7, 9) | (1/9, 1/7, 1/5) | (0.75, 1, 1) |
Criteria | Weigh |
---|---|
Political | 0.0752 |
Economical | 0.1287 |
Social | 0.1100 |
Technological | 0.4888 |
Environmental | 0.0970 |
Legal | 0.1003 |
Sub-Criteria | Options | |||
---|---|---|---|---|
Solar (PV) | Biomass | Wind | Solar Thermal | |
Political acceptance | H | L | L | L |
Political benefit | H | M | H | M |
Sanction | L | M | L | M |
Capital Cost (USD/kW) | 750–2000 | 1609–6400 | 839–1400 | 981–4300 |
Operation and maintenance (OM) Cost (USD/kW/y) | 10–42 | 23–99.4 | 15–60.86 | 25–95 |
Local welfare | VH | L | VH | L |
Social acceptance | VH | H | VH | M |
Investors’ awareness and information | H | M | H | M |
Safety of energy system | H | L | H | H |
Efficiency (%) | 12–20 | 15.4–25 | 35 | 21 |
Reliability | VH | H | L | L |
Technical maturity | H | M | VH | L |
Feasibility | H | M | H | M |
Capacity (%) | 18 | 75 | 30 | 38 |
Availability (kWh/m2/y) | 2130 | 200 | 570 | 2200 |
Ease of running on farmland | H | L | L | M |
Emission reduction (g Co2eq/kWh) | 40–70 | 100 | 40–60 | 15–20 |
Human toxicity (g 1,4-DBeq/kWh) | 21.67 | 38.2 | 6.33 | 4.67 |
Legal regulation of activities | L | M | L | L |
Legal incentives | H | M | M | H |
Options | Solar (PV) | Biomass | Wind | Solar Thermal |
---|---|---|---|---|
Solar (PV) | 0 | −6.233 | −19.229 | −14.637 |
Biomass | −81.575 | 0 | −65.428 | −32.310 |
Wind | −32.493 | −12.519 | 0 | −17.238 |
Solar thermal | −63.228 | −21.768 | −50.650 | 0 |
Option | Value of Options [ξ(Ai)] | Rank |
---|---|---|
Solar (PV) | 1 | 1 |
Biomass | 0 | 4 |
Wind | 0.8409 | 2 |
Solar thermal | 0.3137 | 3 |
Option | Solar (PV) | Biomass | Wind | Solar Thermal |
---|---|---|---|---|
Extended TODIM | 1 | 4 | 2 | 3 |
SAW | 1 | 4 | 2 | 3 |
TOPSIS | 1 | 4 | 2 | 3 |
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Mostafaeipour, A.; Sadeghi Sedeh, A.; Chowdhury, S.; Techato, K. Ranking Potential Renewable Energy Systems to Power On-Farm Fertilizer Production. Sustainability 2020, 12, 7850. https://doi.org/10.3390/su12197850
Mostafaeipour A, Sadeghi Sedeh A, Chowdhury S, Techato K. Ranking Potential Renewable Energy Systems to Power On-Farm Fertilizer Production. Sustainability. 2020; 12(19):7850. https://doi.org/10.3390/su12197850
Chicago/Turabian StyleMostafaeipour, Ali, Ali Sadeghi Sedeh, Shahariar Chowdhury, and Kuaanan Techato. 2020. "Ranking Potential Renewable Energy Systems to Power On-Farm Fertilizer Production" Sustainability 12, no. 19: 7850. https://doi.org/10.3390/su12197850
APA StyleMostafaeipour, A., Sadeghi Sedeh, A., Chowdhury, S., & Techato, K. (2020). Ranking Potential Renewable Energy Systems to Power On-Farm Fertilizer Production. Sustainability, 12(19), 7850. https://doi.org/10.3390/su12197850