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Simulation-Based Optimization of a Piezoelectric Energy Harvester using Artificial Neural Networks and Genetic Algorithm

机译:基于仿真的人工神经网络和遗传算法优化压电能量采集器

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The problem of finding optimal design parameters for a piezoelectric energy harvester is studied. An accurate iterative numerical simulation model based on Euler-Bernoulli beam theory is used as the basis for defining a simulation-based optimization problem. Due to the complexity of the simulation model, evaluation of the Objective Function (OF) is difficult and computationally expensive. In order to remedy this problem, an Artificial Neural Network (ANN) model is trained based on a dataset obtained from the iterative numerical simulation. ANN is then used during the optimization process instead of the original expensive-to-evaluate simulation model. Performance evaluation for the ANN is performed using a set of test data. Genetic Algorithm (GA) optimization method based on the trained ANN model is further developed and optimum system parameters are obtained for an energy harvester based on piezoelectric patches and cantilever aluminum beam.
机译:研究了寻找压电能量收集器的最佳设计参数的问题。基于Euler-Bernoulli束理论的精确迭代数值仿真模型被用作定义基于仿真的优化问题的基础。由于仿真模型的复杂性,目标函数(OF)的评估很困难并且计算量很大。为了解决此问题,基于从迭代数值模拟获得的数据集训练了人工神经网络(ANN)模型。然后在优化过程中使用ANN代替原始的昂贵评估模型。使用一组测试数据对ANN进行性能评估。进一步开发了基于训练后的神经网络模型的遗传算法优化方法,并基于压电贴片和悬臂铝梁为能量采集器获得了最优的系统参数。

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