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Information Journal Paper

Title

APPLICATION OF REINFORCEMENT LEARNING ALGORITHM FOR DETERMINING THE OPERATIONAL INSTRUCTIONS OF THE ON-REQUEST METHOD FOR OPTIMAL WATER DISTRIBUTION AND DELIVERY

Pages

  283-291

Abstract

 The on-request system is considered as one of the effective WATER DISTRIBUTION AND DELIVERY systems. It can be applied to currently available irrigation networks but, the main challenge for its application is the extraction and provision of appropriate OPERATIONAL INSTRUCTIONS. The main objective followed in the research the development of Fuzzy Sarsa reinforcement Learning (FSL) model for extracting operation al scheduling for the on request irrigation systems. The FSL is to be evaluated in the E1R1 canal of Dez network. Requested discharges are the input of the algorithm and the output comprised of the optimum OPERATIONAL INSTRUCTIONS. Water depth and flow performance indicators were made use of for an evaluation of the two performed scenarios. In scenario No. 1, as an exemplary sample, in which turnouts No. 5 and 6 demands increase from 0.1 to 0.2 m3/s while the other turnouts are closed, the minimum values of efficiency and adequacy indicators were recorded as 0.989 and 0.994; and while maximum and average values of water depth deviations being obtained 8.4% and 7.4%, respectively. Considering the results, FSL can be applied as manual adjustment of the structures available on the present irrigation networks for a determination of the OPERATIONAL INSTRUCTIONS.

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    APA: Copy

    SHAHVERDI, KAZEM, MONEM, MOHAMMAD JAVAD, & NILI, MAJID. (2015). APPLICATION OF REINFORCEMENT LEARNING ALGORITHM FOR DETERMINING THE OPERATIONAL INSTRUCTIONS OF THE ON-REQUEST METHOD FOR OPTIMAL WATER DISTRIBUTION AND DELIVERY. IRANIAN JOURNAL OF SOIL AND WATER RESEARCH, 46(2), 283-291. SID. https://sid.ir/paper/225562/en

    Vancouver: Copy

    SHAHVERDI KAZEM, MONEM MOHAMMAD JAVAD, NILI MAJID. APPLICATION OF REINFORCEMENT LEARNING ALGORITHM FOR DETERMINING THE OPERATIONAL INSTRUCTIONS OF THE ON-REQUEST METHOD FOR OPTIMAL WATER DISTRIBUTION AND DELIVERY. IRANIAN JOURNAL OF SOIL AND WATER RESEARCH[Internet]. 2015;46(2):283-291. Available from: https://sid.ir/paper/225562/en

    IEEE: Copy

    KAZEM SHAHVERDI, MOHAMMAD JAVAD MONEM, and MAJID NILI, “APPLICATION OF REINFORCEMENT LEARNING ALGORITHM FOR DETERMINING THE OPERATIONAL INSTRUCTIONS OF THE ON-REQUEST METHOD FOR OPTIMAL WATER DISTRIBUTION AND DELIVERY,” IRANIAN JOURNAL OF SOIL AND WATER RESEARCH, vol. 46, no. 2, pp. 283–291, 2015, [Online]. Available: https://sid.ir/paper/225562/en

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