研究者業績

WANG RUCI

ワン ルシ  (RUCI WANG)

基本情報

所属
千葉大学 環境リモートセンシング研究センター 特任助教
筑波大学 生命環境系 客員研究員
学位
理学博士(2020年3月 筑波大学)

研究者番号
20888507
ORCID ID
 https://orcid.org/0000-0001-7049-7006
J-GLOBAL ID
202001013717864345
researchmap会員ID
R000004750

論文

 18
  • Yuji Murayama, Ruci Wang
    15(18) 4474-4474 2023年9月12日  査読有り招待有り
  • 村山祐司, WANG RUCI
    エストレーラ (343) 2-8 2022年10月  査読有り招待有り
  • Ruci Wang, Hao Hou, Yuji Murayama, Takehiro Morimoto
    Buildings 12(8) 1240-1240 2022年8月14日  査読有り筆頭著者
  • Chuhui Shen, Hao Hou, Yaoyao Zheng, Yuji Murayama, Ruci Wang, Tangao Hu
    83 103992-103992 2022年8月  査読有り
  • Yanfei Wu, Hao Hou, Ruci Wang, Yuji Murayama, Luoyang Wang, Tangao Hu
    Sustainable Cities and Society 79 103717-103717 2022年4月  査読有り
  • Yaoyao Zheng, Yao Li, Hao Hou, Yuji Murayama, Ruci Wang, Tangao Hu
    Remote Sensing 13(8) 1526-1526 2021年4月15日  査読有り
  • Ruci Wang, Yuji Murayama, Takehiro Morimoto
    Remote Sensing Applications: Society and Environment 22 100474-100474 2021年4月  査読有り筆頭著者責任著者
  • Shyamantha Subasinghe, Ruci Wang, Matamyo Simwanda, Yuji Murayama, Lidia Lazarova Vitanova
    Asian Geographer 1-21 2021年3月24日  査読有り
  • Ruci Wang, Yuji Murayama
    Sustainable Cities and Society 102432-102432 2020年8月  査読有り筆頭著者責任著者
  • Ruci Wang, Hao Hou, Yuji Murayama, Ahmed Derdouri
    Remote Sensing 12(3) 440-440 2020年1月31日  査読有り筆頭著者
    Rapid urbanization is one of the most concerning issues in the 21st century because of its significant impacts on various fields, including agriculture, forestry, ecology, and climate. The urban heat island (UHI) phenomenon, highly related to the rapid urbanization, has attracted considerable attention from both academic scholars and governmental policymakers because of its direct influence on citizens’ daily life. Land surface temperature (LST) is a widely used indicator to assess the intensity of UHI significantly affected by the local land use/cover (LULC). In this study, we used the Landsat time-series data to derive the LULC composition and LST distribution maps of Nanjing in 2000, 2014, and 2018. A correlation analysis was carried out to check the relationship between LST and the density of each class of LULC. We found out that cropland and forest in Nanjing are helping to cool the city with different degrees of cooling effects depending on the location and LULC composition. Then, a Cellar Automata (CA)-Markov model was applied to predict the LULC conditions of Nanjing in 2030 and 2050. Based on the simulated LULC maps and the relationship between LST and LULC, we delineated high- and moderate-LST related risk areas in the city of Nanjing. Our findings are valuable for the local government to reorganize the future development zones in a way to control the urban climate environment and to keep a healthy social life within the city.
  • Manjula Ranagalage, Ruci Wang, M. H. J. P. Gunarathna, D. M. S. L. B. Dissanayake, Yuji Murayama, Matamyo Simwanda
    Remote Sensing 11(15) 1743-1743 2019年7月24日  査読有り
    Forecasting landscape changes is vital for developing and implementing sustainable urban planning. Presently, apart from lowland coastal cities, mountain cities (i.e., hill stations) are also facing the negative impacts of rapid urbanization due to their economic and social importance. However, few studies are addressing urban landscape changes in hill stations in Asia. This study aims to examine and forecast landscape changes in the rapidly urbanizing hill station of Nuwara Eliya, Sri Lanka. Landsat data and geospatial techniques including support vector machines, urban–rural gradient, and statistical analysis were used to map and examine the land use/land cover (LULC) change in Nuwara Eliya during the 1996–2006 and 2006–2017 periods. The multilayer perceptron neural network-Markov model was applied to simulate future LULC changes for 2027 and 2037. The results show that Nuwara Eliya has been directly affected by rapid urban development. During the past 21 years (1996–2017), built-up areas increased by 1791 ha while agricultural land declined by 1919 ha due to augmented urban development pressure. The pressure of urban development on forest land has been relatively low, mainly due to strict conservation government policies. The results further show that the observed landscape changes will continue in a similar pattern in the future, confirming a significant increase and decrease of built-up and agricultural land, respectively, from 2017 to 2037. The changes in agricultural land exhibit a strong negative relationship with the changes in built-up land along the urban–rural gradient (R2 were 0.86 in 1996–2006, and 0.93 in 2006–2017, respectively). The observed LULC changes could negatively affect the production of unique upcountry agricultural products such as exotic vegetables, fruits, cut flowers, and world-famous Ceylon tea. Further, unplanned development could cause several environmental issues. The study is important for understanding future LULC changes and suggesting necessary remedial measures to minimize possible undesirable environmental and socioeconomic impacts.
  • Hao Hou, Ruci Wang, Yuji Murayama
    Science of The Total Environment 661 422-431 2019年4月  査読有り責任著者
  • Ruci Wang, Yuji Murayama
    Tsukuba geoenvironmental sciences 14 37-44 2018年12月  査読有り筆頭著者責任著者
  • Ruci Wang, Hao Hou, Yuji Murayama
    Sustainability 10(8) 2633-2633 2018年7月26日  査読有り筆頭著者責任著者
    Rapid urbanization is occurring throughout China, especially in megacities. Using a land use model to obtain future land use/cover conditions is an essential method to prevent chaotic urban sprawl and imbalanced development. This study utilized historical Landsat images to create land use/cover maps to predict the land use/cover changes of Tianjin city in 2025 and 2035. The cellular automata–Markov (CA–Markov) model was applied in the simulation under three scenarios: the environmental protection scenario (EPS), crop protection scenario (CPS), and spontaneous scenario (SS). The model achieved a kappa value of 86.6% with a figure of merit (FoM) of 12.18% when compared to the empirical land use/cover map in 2015. The results showed that the occupation of built-up areas increased from 29.13% in 2015 to 38.68% (EPS), 36.18% (CPS), and 47.94% (SS) in 2035. In this context, current urbanization would bring unprecedented stress on agricultural resources and forest ecosystems, which could be attenuated by implementing protection policies along with decelerating urban expansion. The findings provide valuable information for urban planners to achieve sustainable development goals.
  • Ruci Wang, Ahmed Derdouri, Yuji Murayama
    Sustainability (Switzerland) 10(6) 2056-2056 2018年6月17日  査読有り筆頭著者責任著者
    Simulating future land use/cover changes is of great importance for urban planners and decision-makers, especially in metropolitan areas, to maintain a sustainable environment. This study examines the changes in land use/cover in the Tokyo metropolitan area (TMA) from 2007 to 2017 as a first step in using supervised classification. Second, based on the map results, we predicted the expected patterns of change in 2027 and 2037 by employing a hybrid model composed of cellular automata and the Markov model. The next step was to decide the model inputs consisting of the modeling variables affecting the distribution of land use/cover in the study area, for instance distance to central business district (CBD) and distance to railways, in addition to the classified maps of 2007 and 2017. Finally, we considered three scenarios for simulating land use/cover changes: spontaneous, sub-region development, and green space improvement. Simulation results show varied patterns of change according to the different scenarios. The sub-region development scenario is the most promising because it balances between urban areas, resources, and green spaces. This study provides significant insight for planners about change trends in the TMA and future challenges that might be encountered to maintain a sustainable region.
  • Ruci Wang, Yuji Murayama
    ISPRS International Journal of Geo-Information 6(5) 150-150 2017年5月1日  査読有り筆頭著者責任著者
    In recent years, urban areas have been expanding rapidly in the world, especially in developing countries. With this rapid urban growth, several environmental and social problems have appeared. Better understanding of land use and land cover (LULC) change will facilitate urban planning and constrain these potential problems. As one of the four municipalities in China, Tianjin has experienced rapid urbanization and such trend is expected to continue. Relying on remote sensing (RS) and geographical information system (GIS) tools, this study investigates LULC change in Tianjin city. First, we used RS to generate classification maps for 1995, 2005, and 2015. Then, simulation models were applied to evaluate the LULC changes. Analysis of the 1995, 2005, and 2015 LULC maps shows that more than 10% of the cropland areas were transformed into built-up areas. Finally, by employing the Markov model and cellular automata (CA) model, the LULC in 2025 and 2035 were simulated and forecasted. Our analysis contributes to the understanding of the development process in the Tianjin area, which will facilitate future planning, as well as constraining the potential negative consequences brought by future LULC changes.

MISC

 1
  • Ahmed Derdouri, Ruci Wang, Yuji Murayama, Toshihiro Osaragi
    Remote Sensing 13(18) 2021年9月  
    An urban heat island (UHI) is a serious phenomenon associated with built environments and presents threats to human health. It is projected that UHI intensity will rise to record levels in the following decades due to rapid urban expansion, as two-thirds of the world population is expected to live in urban areas by 2050. Nevertheless, the last two decades have seen a considerable increase in the number of studies on surface UHI (SUHI)—a form of UHI quantified based on land surface temperature (LST) derived from satellite imagery—and its relationship with the land use/cover (LULC) changes. This surge has been facilitated by the availability of freely accessible five-decade archived remotely sensed data, the use of state-of-art analysis methods, and advancements in computing capabilities. The authors of this systematic review aimed to summarize, compare, and critically analyze multiple case studies—carried out from 2001 to 2020—in terms of various aspects: study area characteristics, data sources, methods for LULC classification and SUHI quantification, mechanisms of interaction coupled with linking techniques between SUHI intensity with LULC spatial and temporal changes, and proposed alleviation actions. The review could support decision-makers and pave the way for scholars to conduct future research, especially in vulnerable cities that have not been well studied.

講演・口頭発表等

 26

所属学協会

 4

共同研究・競争的資金等の研究課題

 4