Department of Electrical Engineering, The Hashemite University, Zarqa 13133, Jordan.
Sensors (Basel). 2021 Jul 5;21(13):4598. doi: 10.3390/s21134598.
Remote monitoring sensor systems play a significant role in the evaluation and minimization of natural disasters and risk. This article presents a sustainable and real-time early warning system of sensors employed in flash flood prediction by using a rolling forecast model based on Artificial Neural Network (ANN) and Golden Ratio Optimization (GROM) methods. This Early Flood Warning System (EFWS) aims to support decision makers by providing reliable and accurate information and warning about any possible flood events within an efficient lead-time to reduce any damages due to flash floods. In this work, to improve the performance of the EFWS, an ANN forecast model based on a new optimization method, GROM, is developed and compared to the traditional ANN model. Furthermore, due to the lack of literature regarding the optimal ANN structural model for forecasting the flash flood, this paper is one of the first extensive investigations into the impact of using different exogenous variables and parameters on the ANN structure. The effect of using a rolling forecast model compared to fixed model on the accuracy of the forecasts is investigated as well. The results indicate that the rolling ANN forecast model based on GROM successfully improved the model accuracy by 40% compared to the traditional ANN model and by 93.5% compared to the fixed forecast model.
远程监测传感器系统在评估和减轻自然灾害风险方面发挥着重要作用。本文提出了一种基于人工神经网络(ANN)和黄金分割优化(GROM)方法的滚动预测模型的可持续实时洪水预警传感器系统。该洪水预警系统(EFWS)旨在通过提供可靠、准确的信息和预警,在高效的提前期内支持决策者,以减少因洪水造成的任何损失。在这项工作中,为了提高 EFWS 的性能,开发了一种基于新优化方法 GROM 的 ANN 预测模型,并与传统的 ANN 模型进行了比较。此外,由于缺乏关于用于预测洪水的最佳 ANN 结构模型的文献,本文是首次对使用不同外生变量和参数对 ANN 结构的影响进行广泛研究的论文之一。还研究了与固定模型相比,滚动预测模型对预测精度的影响。结果表明,基于 GROM 的滚动 ANN 预测模型与传统的 ANN 模型相比,成功地将模型精度提高了 40%,与固定预测模型相比,提高了 93.5%。