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Adaptive system for dam behavior modeling based on linear regression and genetic algorithms

机译:基于线性回归和遗传算法的大坝行为建模自适应系统

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Most of the existing methods for dam behavior modeling require a persistent set of input parameters. In real-world applications, failures of the measuring equipment can lead to a situation in which a selected model becomes unusable because of the volatility of the independent variables set. This paper presents an adaptive system for dam behavior modeling that is based on a multiple linear regression (MLR) model and is optimized for given conditions using genetic algorithms (GA). Throughout an evolutionary process, the system performs real-time adjustment of regressors in the MLR model according to currently active sensors. The performance of the proposed system has been evaluated in a case study of modeling the Bocac dam (at the Vrbas River located in the Republic of Srpska), whereby an MLR model of the dam displacements has been optimized for periods when the sensors were malfunctioning. Results of the analysis have shown that, under real-world circumstances, the proposed methodology outperforms traditional regression approaches.
机译:大坝行为建模的大多数现有方法都需要一组持久的输入参数。在实际应用中,由于独立变量集的易变性,测量设备的故障可能会导致无法使用所选模型的情况。本文提出了一种基于大线性回归(MLR)模型的大坝行为建模自适应系统,并使用遗传算法(GA)针对给定条件进行了优化。在整个进化过程中,系统会根据当前活动的传感器对MLR模型中的回归变量进行实时调整。在对Bocac大坝(位于Srpska共和国的Vrbas河上)进行建模的案例研究中,对所建议系统的性能进行了评估,从而针对传感器故障期间的大坝位移的MLR模型进行了优化。分析结果表明,在实际情况下,所提出的方法要优于传统的回归方法。

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