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Water pump station scheduling optimization using an improved genetic algorithm approach

机译:利用改进的遗传算法方法调度优化水泵站

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The problem of energy and water wasting can be found all over the world. Water pump stations are mainly operated empirically, under the experience of the employees. Such behavior generates waste of energy and high operation costs, what are completely undesired. The system of the pump station can be modeled. The system is responsible to govern the pumps rules and reactions. Each pump has a specific curve and reacts differently to changes in the system. The best optimal scheduling point of operation of the pumps is the main focus of the present work, based on the shaft power of the pumps. The operation constraints and the water pump best efficiency zone should always be ensured in order to save energy, avoid shortages, and do not waste water. However, some typical mathematical techniques often are unable to find the optimal solution in a practical approach, due to the complexity of the constraints and difficulties of modelling the system. Therefore, aiming to solve such situation, an improved genetic algorithm method is presented. The method is designed with adaptive crossover and mutation operators, allowing a faster convergence and enhancing the chance of finding the global optimal solution. Several tests were carried out in a practical manner in a water pump station located in Shanghai, China. The method showed satisfactory results and proper implementation performance.
机译:在世界各地都可以发现能量和水浪费问题。水泵站主要是经验在员工经验的经验上运作。这种行为产生了能量和高运行成本的浪费,完全不受欢迎。可以建模泵站的系统。该系统负责管理泵规则和反应。每个泵具有特定的曲线并对系统的变化不同。基于泵的轴功率,泵的最佳优化调度点是当前工作的主要焦点。应始终确保操作约束和水泵最佳效率区以节省能源,避免短缺,并不会浪费水。然而,由于建模系统的约束和困难的复杂性,一些典型的数学技术通常无法以实际方法找​​到最佳解决方案。因此,旨在解决这种情况,提出了一种改进的遗传算法方法。该方法采用自适应交叉和突变运算符设计,允许更快的收敛并增强找到全局最优解决方案的机会。几次测试是以实际的方式在中国上海的水泵站进行。该方法表现出令人满意的结果和适当的实施性能。

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