TY - JOUR ID - 85007 TI - Sustainable Storm Water Management by Predicting Climate Change Using Fuzzy Neural Network and GIS JO - Iranica Journal of Energy & Environment JA - IJEE LA - en SN - 2079-2115 AU - Kebria, I. A. AU - Hogland, W. AD - Environmental Researcher, Linnaeus University, Växjö, Sweden+Department of Biology and Environmental Science, Linnaeus University, Kalmar, Sweden AD - Department of Biology and Environmental Science, Linnaeus University, Kalmar, Sweden Y1 - 2019 PY - 2019 VL - 10 IS - 1 SP - 65 EP - 71 KW - Storm water management KW - climate change KW - Fuzzy Neural Network KW - Geographic information system DO - 10.5829/ijee.2019.10.01.10 N2 - Analysis of urban climate changing is the basis for the implementation of storm water management measurements. Climate tensions such as changing precipitation patterns, fluctuations in temperature, and extreme events are already affecting water resources. For instance, precipitation pattern will be changed due to more water vapor in the atmosphere. Hence, it will not be evenly distributed. Some places will see more rain, others will get less snow. However, climate changes, such as the amount, timing, and intensity of rain events, in combination with land development, can significantly affect the amount of storm water runoff that needs to be managed. Firstly, this essay will be discussed about the prediction of climate change using a fuzzy neural network (FNN) and it shows the accuracy of this method for anticipating storm water. Secondly, based on the results of the first phase, it determines the critical area for preparing storm water systems with the application of GIS tools and technology. UR - https://www.ijee.net/article_85007.html L1 - https://www.ijee.net/article_85007_6e39d36f6d36c1df57493a30a974f629.pdf ER -