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Classifier System for Rule-Based Operation of Canal Gates

机译:基于规则的运河闸门操作分类器系统

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A classifier system for automatic operation of canal gates was developed and tested through simulation modeling. The classifier system manipulates a population of rules that are trained to "learn" appropriate operational responses to unsteady hydraulic conditions. Each rule has one condition and one associated action. The condition and action pair were applied by matching rules to the current hydraulic status, then taking the gate action specified by the matching rule. Sets of gate operational rules that define appropriate responses to different environment situations, represented by hydraulic transients due to changing water deliveries along the canal, were generated through the classifier system. An apportionment-of-credit algorithm was designed by applying a combination of immediate and delayed rewards. Three components of the delayed reward were used to quantify performance in terms of quick stabilization to target water depths in the canal, and small depth fluctuations. A genetic algorithm was applied to inject new rules. In the best cases, the classifier system produced operational rules that stabilized the simulated canal system within 2% of the target levels in 95% of the simulations. Compared to three local automation methods, the classifier system showed the best overall performance in terms of hydraulic stabilization time and matching target water levels.
机译:开发了用于闸门自动操作的分类器系统,并通过仿真建模对其进行了测试。分类器系统操纵一组规则,这些规则经过训练以“学习”对不稳定液压条件的适当操作响应。每个规则都有一个条件和一个关联的动作。通过匹配规则将条件和作用对应用于当前液压状态,然后采取匹配规则指定的闸门作用。通过分类器系统生成了一组闸门操作规则,这些规则定义了对不同环境情况的适当响应,这些响应以水力瞬变为代表,这是由于沿运河的输水量变化而引起的水力瞬变。通过应用立即奖励和延迟奖励的组合来设计信用分配算法。延迟奖励的三个组成部分用于根据对渠中水深的快速稳定和较小的深度波动来量化性能。遗传算法被应用于注入新规则。在最佳情况下,分类器系统生成的操作规则将模拟运河系统稳定在目标水平的2%内(在95%的模拟中)。与三种本地自动化方法相比,分类器系统在水力稳定时间和匹配目标水位方面表现出最佳的整体性能。

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