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首页> 外文期刊>Transactions of the Institute of Measurement and Control >Parameter identification of a reduced nonlinear model for an activated sludge process based on cuckoo search algorithm
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Parameter identification of a reduced nonlinear model for an activated sludge process based on cuckoo search algorithm

机译:基于Cuckoo搜索算法的激活污泥过程的减少非线性模型的参数识别

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摘要

Parameter identification plays a key role in systems' modeling and control. This paper deals with a parameter identification problem for an activated sludge process used in wastewater treatment. The considered model is a nonlinear one inspired from the well-known ASM1. Nature-inspired algorithms have gained significant attention over the last years as useful means to solve parameter identification problem. The proposed approach in this paper is the cuckoo search algorithm based on both the fascinating brood parasitic behavior and the levy flights. The advantages of this method are its simplicity and robustness, but it requires a good tuning of its parameters to have the best results. The comparison of the simulation results with the Nelder-Mead method, genetic algorithm, and particle swarm optimization proves the capability of this method to identify the model's parameters with high precision.
机译:参数标识在系统建模和控制中播放关键作用。 本文对废水处理中使用的活性污泥工艺进行了参数识别问题。 考虑的模型是一种从众所周知的ASM1启发的非线性。 自然启发算法在过去几年中获得了重大关注,作为解决参数识别问题的有用手段。 本文的提出方法是基于迷人的寄生行为和征税航班的杜鹃搜索算法。 这种方法的优点是其简单性和鲁棒性,但它需要良好的调整其参数来具有最佳结果。 使用Nelder-Mead方法,遗传算法和粒子群优化的仿真结果的比较证明了这种方法的能力,以高精度地识别模型的参数。

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