1. Introduction
The “dark-under-the-lights” areas caused by the long-term unbalanced and inadequate development of urban space have always been sources of pain and difficulty in urban renewal. So far, scholars have mainly used the concept of “shadow areas” to discuss the issue of “darkness under the lamp”, but existing research has mainly focused on the “shadow area” phenomenon on a regional scale [
1,
2,
3], while relatively little attention has been paid to the phenomenon of “shadow areas” on an intra-urban scale [
4,
5,
6]. However, since reforming and opening up, many Chinese cities have been faced with the prominent problems of unbalanced and even polarized development due to the rapid urbanization process. Such unbalanced development has been specifically manifested by the emergence of urban shadow areas, which are usually close to the urban central areas of a city but are characterized by “low-density buildings, low-end business types, and low-end functions”. For instance, some studies have found that there are urban shadow areas of a certain scale within about 500–800 m around a city’s central areas, such as those found in Zhujiang New Town and Guangzhou Beijing Road in Guangzhou, Yan’an Road in Hangzhou, Xinjiekou in Nanjing, etc. [
5].
In an era of stock planning, urban shadow areas are typical “high-value, low-price” areas which usually include shantytowns, old communities, industrial relics, and other spatial types [
7]. In terms of spatial characteristics, such as development intensity, building density, and building height, there is a huge gap between these urban shadow areas and the surrounding urban central areas, which, to a certain extent, affects the happiness and well-being of people living and working in these shadow areas. At the same time, while these shadow areas promote the formation of the core structure of urban central areas, they also exacerbate the unbalanced and inadequate spatial development of the urban central areas. With the in-depth implementation of urban renewal policies in many Chinese cities, how to further deepen the scientific understanding of the spatial development laws of urban shadow areas has become an important issue that urgently requires more academic attention [
8].
Existing research on urban shadow areas has mainly analyzed their spatial morphological characteristics such as development intensity and building density [
5,
6]. Some studies have also focused on how to detect urban shadow areas in remote sensing images by developing some identification algorithms [
9,
10,
11]. However, studies merely based on urban morphology data may not fully reflect the spatial development patterns of urban shadow areas, which does not help us understand the dynamic mechanisms of the formation of urban shadow areas. In fact, due to advantages in location and cost, urban shadow areas are the primary place for the spillover of non-central functions from their surrounding central areas, such as residences, restaurants, express delivery, retail, and other functions that provide citizens with security and convenient services. This results in significant flows of different types of elements, such as people, logistics, and information, creating a dynamic connection between urban shadow areas and their surrounding central areas. Among the many types of element flows, people’s daily activities most directly reflect the needs of different groups of people in urban shadow areas, and the interaction between daily activities and urban morphology is also the most significant [
12]. Therefore, the impact of daily activities needs to be considered in the definition and identification of urban shadow areas. At the same time, it is necessary to further explore the connection rules between urban shadow areas and other parts of a city by analyzing the patterns of people flows, which helps provide a theoretical basis for promoting the renewal of urban shadow areas from a humanistic perspective.
Against this backdrop, this paper takes Nanjing as an example, develops a method to identify urban shadow areas, and analyzes how urban shadow areas are dynamically connected with other parts of the city by drawing upon data on urban morphology and people flows. In addition, policy implications concerning how to eliminate the negative effects of urban shadow areas are also put forward based on the empirical findings. In doing so, we aim to contribute to the existing literature by identifying and characterizing urban shadow areas from both static and dynamic perspectives.
The remainder of this paper is structured as follows.
Section 2 reviews the existing literature on the definition, identification, and evolution mechanisms of urban shadow areas.
Section 3 describes the data and methodologies used in this study.
Section 4 presents the identification results of urban shadow areas in Nanjing.
Section 5 analyzes how urban shadow areas have been connected with the other parts of Nanjing from a dynamic perspective.
Section 6 discusses the empirical findings and puts forward some policy implications and
Section 7 concludes the study.
4. The Distribution of Urban Shadow Areas in Nanjing
Based on the above-mentioned data and method, we finally identify 19 urban shadow areas within the study area, 11 of which are located in the old downtown area of Nanjing.
Table 1 describes the basic morphological information of these urban shadow areas, including their areas, the number of blocks that they contain, and their nearby urban central areas. Overall, these urban shadow areas contain 97 blocks, covering an area of about 13.53 square kilometers. Furthermore, these urban shadow areas have a total building floor area of about 7.21 square kilometers, and a total building footprint area of about 2.88 square kilometers. Therefore, the average plot ratio of these urban shadow areas is about 0.53 and the average building density is 0.21. Moreover, we can find that there is remarkable heterogeneity among these urban shadow areas. For instance, their areas range from 4.19 hectares to 323.59 hectares, and the number of blocks they contain range from 1 to 14. Despite this heterogeneity, we can see that all these urban shadow areas are close to at least one urban central area of Nanjing.
Figure 5 depicts the spatial distribution of urban shadow areas in Nanjing. Overall, we can see that the distribution is characterized by internal agglomeration and external dispersion. Specifically, internal agglomeration refers to the relatively dense distribution of multiple urban shadow areas within the old downtown area of Nanjing, such as the Xinjiekou central area, the Hunan Road central area, and the Confucius Temple central area. For instance, urban shadow areas such as Guyilang Parcel, Qingshi Street, Youfuxi Street, Huaihai Road, Huowaxiang Parcel, and Cibeishe Parcel are all around the Xinjiekou central area, while urban shadow areas such as Hunan Road and Yunnanbei Road are close to the Hunan Road central area. In addition, internal agglomeration is reflected by the fact that these urban shadow areas are mainly clustered along the Zhongshanbei Road, Zhongshan Road, and Zhongshandong Road, and along the Zhonghua Road to Zhonghuamen Gate, which is spatially related to the city’s historical context. This may also reflect the historical factors that influence the phenomenon of urban shadow areas. In fact, the Gulou District and Qinhuai District within the old downtown area contain the largest number of urban shadow areas, partly because these two administrative districts have a relatively long history of development and are among the earliest developed areas in Nanjing. Therefore, they are more likely to experience unbalanced development.
External dispersion refers to the fact that the number of urban shadow areas is relatively smaller outside the old downtown area. The distribution of the eight urban shadow areas shows a relatively scattered layout, which has occurred in some newly developed areas such as the Hexi central area in the west of Nanjing and the Dongshan central area in the south of Nanjing. Specifically, urban shadow areas such as Qingliangmen Avenue and Fengtainan Road are located in the Hexi central area, while the Dongshan central area mainly contains urban shadow areas such as Baijiahu Parcel and Kening Road. Furthermore, some urban shadow areas are located around the Jiangbei central area and the Xianlin central area, which are further away from the old downtown area of Nanjing.
5. The Dynamic Connections between Urban Shadow Areas and Other Parts of Nanjing
Figure 6 shows the calculation results of the two indicators that we have constructed to reflect the dynamic connections of the identified urban shadow areas with other parts of Nanjing. As for the indicator of volatility of people flows, this ranges from 1.80 to 33.86 with an average value of 15.27. Specifically, the Wutang Parcel shadow area has the lowest volatility value, while the Yihe Road shadow area has the highest volatility value. In terms of the indicator of the day–night ratio of people flows, it has an average value of 5.04, with the value of the Xianlin Parcel shadow area being the lowest (2.14) and that of the Jiankang Road shadow area being the largest (9.70).
In
Figure 6, the two red lines represent the average values of the volatility and day–night ratio, respectively. With the two average values as the threshold, we can further divide these urban shadow areas into four types: (1) those with relatively low values of both volatility and day–night ratio, including Wutang Parcel, Kening Road, Qingliangmen Avenue, Guyilang Parcel, Hunan Road, Xianlin Parcel, and Liuhe Parcel; (2) those with relatively low values of volatility but high values of day–night ratio, including Baijiahu Parcel, Andemen Avenue, Fengtainan Road, and Shengzhou Road; (3) those with relatively high values of volatility but low values of day–night ratio, including Huowaxiang Parcel, Yunanbei Road, Pukou Parcel, and Youfuxi Street; and (4) those with relatively high values of both volatility and day–night ratio, including Jiankang Road, Qingshi Street, Cibeishe Parcel, and Yihe Road. For each type, we select one representative shadow area to explore in detail the characteristics of its dynamic connections with other parts of Nanjing as well as the underlying mechanisms.
5.1. Low in Both Volatility and Day–Night Ratio: Using Wutang Parcel as an Example
For urban shadow areas that have relatively low values of both volatility and day–night ratio, they generally have weak connections with other parts of Nanjing and these connections are relatively stable over time. These shadow areas are mainly distributed in the peripheral areas of Nanjing, which have been dominated by vacant land and agricultural and forestry land. Therefore, they usually have fragmented spaces and are less attractive for people.
Here, we take the Wutang Parcel shadow area as an example, which is located to the north of the old downtown area of Nanjing (
Figure 5). Its connections with other parts of Nanjing at different time intervals is shown in
Figure 7. Obviously, this area mainly connects with its nearby areas, with a relatively lower level of connection strength and fluctuation. The spatial morphology of this shadow area has two main characteristics, which partly account for the distribution of its dynamic connections. First, this shadow area is mainly surrounded by district-level urban centers and large residence, while the area itself is dominated by abandoned plants and agricultural and forestry land. Therefore, it lacks sufficient public service facilities and the development intensity of this area is relatively lower than its surrounding areas. Second, the internal traffic network structure of this shadow area is relatively broken, which mainly contains small and narrow roads. Thus, the accessibility of this shadow area is weak, which is not attractive for people either. Taken together, we find that this shadow area can only provide very limited employment opportunities and its public service facilities are not attractive for people to agglomerate. Consequently, it is expected to have low values in both volatility and the day–night ratio of people flows.
5.2. Low in Volatility but High in Day–Night Ratio: Using Baijiahu Parcel as an Example
For urban shadow areas with low values of volatility but high values of day–night ratio, their internal spaces are usually homogeneous, most of which are dominated by production and manufacturing functions with a similar architectural texture. However, due to the relatively large number of job opportunities these shadow areas can provide, they usually have more frequent people flows during the daytime and less frequent people flows during the nighttime. Therefore, the day–night ratio of people flows for these shadow areas is remarkable.
This study takes the Baijiahu Parcel as an example to further explore the spatial characteristics of these shadow areas. As shown in
Figure 8, there is a remarkable difference in people flows between the daytime (8:00–10:00 am) and nighttime (2:00–4:00 am), suggesting a relatively high value of day–night ratio. Specifically, the spatial characteristics of the Baijiahu Parcel shadow area can be discussed from the following aspects. First, since the shadow area is within the Jiangning Development Zone of Nanjing, it has been dominated by industrial land. Moreover, this shadow area has attracted many high-tech industries such as green and intelligent automobile manufacturing, life science, artificial intelligence, and future networks. Such industries have enjoyed rapid development, which helps this area provide relatively stable employment opportunities. Second, this shadow area has good traffic conditions. It is adjacent to the Baijiahu central area of Nanjing, the Nanjing South Station, and Nanjing Lukou International Airport, which ensures that the area has good accessibility. From the perspective of urban morphology, however, the buildings of this shadow area are relatively small in scale, being mainly low factory buildings with one–three floors. Furthermore, there is a large proportion of vacant land due to the requirements of production protection. In contrast, its surrounding areas contain many commercial complexes and high-rise residential buildings.
Influenced by the above-mentioned characteristics, the population type and the pattern of their daily activities are relatively unitary. Employees working in these manufacturing factories account for the majority population in this area, leading to a small residential population base and a relatively low fluctuation rate. In addition, most of the employees are residents living in nearby areas, which results in regular commuting behaviors. Taken together, we can expect that the people flows of this shadow area are less fluctuating but have a relatively high value of day–night ratio.
5.3. High in Volatility but Low in Day–Night Ratio: Using Hunan Road as an Example
For urban shadow areas with high values of volatility and low values of day–night ratio, the most typical feature is the complexity of their land use. It not only contains some dilapidated open space or land under construction, but also a certain amount of commercial facilities. The latter helps attract and gather people, resulting in relatively rich types of people activities. However, due to the relatively weak functions in terms of residences and employment, there is no significant difference in people flows during the daytime and nighttime, which usually means a relatively low day–night ratio.
We select the Hunan Road shadow area as a typical representative of this type of shadow area (
Figure 9). This area used to be an important node of the network of people flows in Nanjing. It was very attractive for people and consumers to visit because it is close to the Xuanwu Lake and surrounded by many big commercial complexes. However, with the continuous upgrading of urban development and the increasing of people’s living demands, the attractiveness of this area is gradually declining and its renewal is thus imminent. Under this background, this area has entered the stage of demolition and reconstruction, leading to large-scale open spaces under construction. Furthermore, influenced by the decline of its nearby commercial centers, the building density and development intensity of this shadow area have gradually decreased, making this area become increasingly less attractive for people to visit.
Overall, on the one hand, the Hunan Road shadow area has some scattered commercial, residential, and public service facilities. On the other hand, its development is affected by neighboring commercial complexes, universities, parks, and hospitals. Influenced by these two factors, this area has formed a moderate population base. However, the huge difference between this area and its neighboring areas has led to a high level of volatility in terms of people flows. In addition, due to the relatively few employment opportunities it can provide, the differences in people flows of this area during the daytime and nighttime is thus not remarkable, leading to a relatively low value of day–night ratio.
5.4. High in Both Volatility and Day-Night Ratio: Using Cibeishe Parcel as an Example
The majority of the urban shadow areas with high values of volatility and day–night ratio are within the range of the Xinjiekou central area of Nanjing. They are often dominated by old residences and related public service facilities. Though possessing the advantages of relatively dense public service facilities and rich job opportunities, these areas are faced with the disadvantage of relatively high land price and living costs, which leads to a significant tidal phenomenon of people flows.
In this paper, the Cibeishe Parcel is selected as a typical representative of this type of shadow area (
Figure 10). This area is adjacent to the Xinjiekou central area and within walking distance of commercial complexes such as Deji Square and the Jinlun International Plaza. Therefore, it has an advantageous location and is surrounded by abundant commercial and public service facilities. In terms of urban morphology, this area has many old communities and historical relics. Therefore, the building height and development intensity in this area is not so high. In fact, most buildings in this area are less than six floors. Furthermore, the internal road network structure of this area is mainly for residential use and daily commuting. However, due to its closeness to the Xinjiekou central area, this area can provide necessary services for daily life, such as logistics delivery, catering, and leisure. In addition, residents living in this area are also potential employees providing services for the surrounding areas and even the whole city, which results in a relatively high level of fluctuation of people flows. Meanwhile, because this area is dominated by residential land, the employment opportunities it can provide are rather limited, which could also lead to a relatively high value of day–night ratio in terms of people flows.
6. Discussions
In this paper, the existence of urban shadow areas, as well as their dynamic connections with other areas, have been clearly demonstrated in the case of Nanjing. The empirical results of this study suggest that urban shadow areas do exist in cities, which is in line with other studies that have focused on shadow areas on an intra-urban scale [
5,
6,
7]. However, these urban shadow areas are not isolated but have dynamic connections with their neighboring central areas and other parts of the city. Therefore, merely considering urban shadow areas as isolated and negative spaces may not fully capture the significance of urban shadow areas to the overall development of a city. In fact, with the rapid development of digitization and globalization, flows of people, logistics, capital, and information have been substantially enhanced, which has also promoted the evolution of urban spatial structures from a hierarchy to a network [
31,
33]. In this sense, urban shadow areas cannot be simply regarded as isolated and negative spaces of a city. Instead, they actually maintain dynamic connections with other parts of a city and are important nodes of a city’s network structure [
7].
The empirical results have some policy implications for the planning and design of urban shadow areas in a city. For policy makers, they should bear it in mind that urban shadow areas exist at different development stages of a city. In other words, though these areas may generate negative effects on their surrounding areas, these negative effects cannot be permanently eliminated through urban planning and design due to the existence of unbalanced development. The government should actively refine and activate the characteristic resources of historical relics. Using a series of spatial organization methods, such as public space and activity tour line, these resources are re-utilized and “darned” into the overall cultural context of the city, so as to effectively locate or integrate them into the characteristic space system of the city [
6]. In brief, we suggest that policies aiming to improve the development of urban shadow areas could consider the following three aspects.
First, the spatial distribution of urban shadow areas is heterogeneous across different parts of a city. Such heterogeneity should be considered in the relevant policies. Specifically, due to their advantageous locations, urban shadow areas in the old downtown areas of a city usually have frequent people flows. Therefore, it would contribute greatly to the development of these shadow areas if policies could leverage the important role of their neighboring central areas to further enhance the vitality of these shadow areas [
8]. For urban shadow areas in the peripheral areas of a city, policies could focus on how to further strengthen the comparative advantages of these areas so that they can integrate into a city’s network structure.
Second, the temporal distribution of the external connections of urban shadow areas is also heterogeneous. For a certain urban shadow area, the overall volatility and the strength of people flows are different during different time periods of a day, both of which are influenced by both the shadow area itself and its nearby central areas. Therefore, it is necessary to consider such temporal heterogeneity in the planning and design of urban shadow areas to ensure that they maintain relatively enduring and stable vitality. For instance, promoting the development of night markets might be a good way to utilize the temporal characteristics of urban shadow areas, especially for those in the old downtown areas of a city [
23]. This is because these shadow areas are usually less attractive for people during the nighttime. However, they often have large open spaces which can be utilized to develop night markets. In doing so, the night markets can not only bring relatively sustainable people flows to these shadow areas, but also help improve their popularity to a certain extent.
Third, urban shadow areas differ from each other in terms of their dominant functions, which has also resulted in the spatio-temporal heterogeneity of their dynamic connections with other areas. Therefore, such heterogeneity in dominant functions should be considered in policies aiming to eliminate the negative effects of shadow areas on a city’s overall development. For instance, for urban shadow areas dominated by residential functions, it would be useful to diversify the building types with multiple functions to gradually promote the formation of a diversified and inclusive community environment. For urban shadow areas dominated by industrial manufacturing functions, promoting the renewal of old and vacant factories and constructing industrial complexes could be an effective way to attract people and facilitate land use mixing.
7. Conclusions
The formation of urban shadow areas is a common phenomenon during the rapid process of urbanization. However, relatively few efforts have been made to delineate and characterize urban shadow areas in a more quantitative way. In this paper, we propose a method to identify urban shadow areas from the perspective of people flows. Taking Nanjing as a case study and drawing upon data on urban morphology and cellular signaling, we have identified and investigated the dynamic connections of 19 urban shadow areas within its downtown areas. The empirical results show that urban shadow areas differ from each other in terms of their morphological characteristics such as building density and development intensity. While 11 urban shadow areas are within the old downtown areas of Nanjing, the distribution of the rest of the 8 shadow areas are relatively scattered in the periphery. Moreover, we find that these urban shadow areas are not isolated but closely connected with other parts of Nanjing, though the spatio-temporal distribution patterns of their connections differ to some extent. The 19 urban shadow areas are further divided into four types by considering their different distribution patterns of connections, each of which is investigated by analyzing a representative shadow area. Based on the empirical results, we suggest that policies aiming to eliminate the negative effects of urban shadow areas should consider heterogeneity in their spatial distributions within a city, the temporal distribution of their external connections, and their dominant functions.
This study has some limitations which could serve as departure points for future research. For instance, due to data constraints, we have only investigated the dynamic connections of urban shadow areas on a given date. Therefore, future studies could consider comparing the connections from an evolutionary perspective. Furthermore, the underlying mechanisms behind the formation of different types of urban shadow areas have only been qualitatively discussed in this paper. Future studies could further explore the mechanisms in a more quantitative way.