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Farm-based cropping pattern optimization and conjunctive use planning using piece-wise genetic algorithm (PWGA): a case study

机译:基于分段遗传算法(PWGA)的基于农场的种植模式优化和联合使用计划:一个案例研究

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摘要

So far, several agro-economic optimization models have been developed in order to deal with agricultural water resources planning and management, among which the cropping pattern and water allocation optimization models are of significant importance.However, these models usually consider the land as a plain entirety and fail to account for a number of important contributing factors, including the private ownership of agricultural lands and the unique characteristics of each land parcel. Hence, the solutions provided by these models are not fully applicable in real-world and are only meant to help the decision-maker in analyses. In the present study, a new model is developed in order to incorporate farm-level data, and to propose optimal cropping pattern and conjunctive use decisions at farm level. Furthermore, a modified genetic algorithm has been developed by piecewise reorganization of chromosome structure, namely piecewise genetic algorithm (PWGA), and is presented in order to tackle the nonlinearity and the high number of variables involved in the model. A URM-based groundwater model is also coupled with PWGA in order to improve the computational efficiency of the framework. The proposedmodel is then run for various scenarios and the results are compared with those of the general approaches. The results of this study demonstrate that the general plain-level models tend to overestimate the expected net benefits. Moreover, the proposed model is able to optimize the cropping pattern and water allocation rules over the area while supporting each land parcel with appropriate decisions.
机译:迄今为止,已经开发了几种农业经济优化模型来应对农业水资源的规划和管理,其中种植模式和水资源分配优化模型具有重要意义,但是这些模型通常将土地视为平原整体性并未能说明许多重要的促成因素,包括农业用地的私有制以及每个地块的独特特征。因此,这些模型提供的解决方案在现实世界中并不完全适用,仅用于帮助决策者进行分析。在本研究中,开发了一种新模型,以合并农场级别的数据,并提出农场级别的最佳种植模式和联合使用决策。此外,通过对染色体结构进行分段重组,开发了一种改进的遗传算法,即分段遗传算法(PWGA),并提出了该算法,以解决模型中涉及的非线性和大量变量的问题。基于URM的地下水模型也与PWGA结合使用,以提高框架的计算效率。然后针对各种场景运行提出的模型,并将结果与​​常规方法的结果进行比较。这项研究的结果表明,一般的平原模型往往高估了预期的净收益。此外,提出的模型能够优化该区域的种植模式和水分配规则,同时以适当的决策支持每个土地块。

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