Irrigation planning for development of an effective cropping pattern using genetic algorithm

S. Choudhari, M. Kumbhalkar, Mhalsakant M. Sardeshmukh, D. V. Bhise
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Abstract

The majority of surface irrigation schemes are diverse in character, consisting of a diversity of crops and soils as well as a huge network of canals with varying qualities (design capacities, efficiencies, command area, length, duration of operation, etc.). The programmes in semiarid and arid locations are similarly related to limited water supplies and operate on a rotating water distribution system. As a result, managing irrigation in such settings is tough. It demands decisions on how much water and space should be allotted to different crops grown on different soils and in different areas or regions of the scheme (the allocation plan), based on water availability, benefit maximisation, varied needs, and the physical boundaries of the scheme. The current study focuses on the use of genetic algorithms (GA) in irrigation planning. In India, the GA technique is being used to create an effective farming plan for an irrigation project. Constraints include land and water limitations, as well as crop and storage limits. The model is run for various choices of population, generations, cross-over, and mutation probabilities to determine GA parameters. The results of GA are compared to those of linear programming. This case study is about a problem with linear constraints that was addressed using a genetic algorithm. The model's future use will be to address issues with non-linear constraints. Traditional nonlinear programming approaches become difficult and time-intensive in such instances. Future research is being conducted to improve the efficiency and usability of these artificial intelligence systems.
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利用遗传算法制定有效种植模式的灌溉规划
大多数地表水灌溉计划具有多样性的特点,包括多种多样的作物和土壤,以及质量不 同(设计能力、效率、指令区、长度、运行时间等)的巨大渠道网络。半干旱和干旱地区的灌溉计划同样与有限的水供应有关,并在轮流配水系统上运行。因此,在这种环境下管理灌溉十分困难。这就要求根据可用水量、效益最大化、不同需求和灌溉计划的实际边界,决定在不同土壤上种植的不同作物以及在灌溉计划的不同区域或地区应分配多少水和空间(分配计划)。当前研究的重点是遗传算法(GA)在灌溉规划中的应用。在印度,遗传算法技术被用于为灌溉工程制定有效的耕作计划。约束条件包括土地和水的限制,以及作物和储存的限制。该模型在不同的种群、世代、交叉和突变概率选择下运行,以确定 GA 参数。GA 的结果与线性规划的结果进行了比较。本案例研究是关于一个使用遗传算法解决的线性约束问题。该模型未来将用于解决非线性约束问题。在这种情况下,传统的非线性编程方法变得困难且耗时。目前正在进行未来研究,以提高这些人工智能系统的效率和可用性。
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