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Using Artificial Intelligence to Retrieve the Optimal Parameters and Structures of Adaptive Network-Based Fuzzy Inference System for Typhoon Precipitation Forecast Modeling

机译:基于人工智能的台风降水预报建模自适应网络模糊推理系统的最优参数和结构

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摘要

This study aims to construct a typhoon precipitation forecast model providing forecasts one to six hours in advance using optimal model parameters and structures retrieved from a combination of the adaptive network-based fuzzy inference system (ANFIS) and artificial intelligence. To enhance the accuracy of the precipitation forecast, two structures were then used to establish the precipitation forecast model for a specific lead-time: a single-model structure and a dual-model hybrid structure where the forecast models of higher and lower precipitation were integrated. In order to rapidly, automatically, and accurately retrieve the optimal parameters and structures of the ANFIS-based precipitation forecast model, a tabu search was applied to identify the adjacent radius in subtractive clustering when constructing the ANFIS structure. The coupled structure was also employed to establish a precipitation forecast model across short and long lead-times in order to improve the accuracy of long-termprecipitation forecasts. The study area is the Shimen Reservoir, and the analyzed period is from 2001 to 2009. Results showed that the optimal initial ANFIS parameters selected by the tabu search, combined with the dual-model hybrid method and the coupled structure, provided the favors in computation efficiency and high-reliability predictions in typhoon precipitation forecasts regarding short to long lead-time forecasting horizons.
机译:这项研究旨在构建一个台风降水预报模型,该模型使用从基于自适应网络的模糊推理系统(ANFIS)和人工智能的组合中检索到的最佳模型参数和结构,提前一到六个小时提供预报。为了提高降水预报的准确性,然后使用两个结构来建立针对特定提前期的降水预报模型:一个单模型结构和一个双模型混合结构,其中结合了较高和较低的降水预测模型。为了快速,自动和准确地检索基于ANFIS的降水预测模型的最佳参数和结构,在构建ANFIS结构时,在禁忌搜索中应用禁忌搜索来识别相邻半径。为了提高长期降水预报的准确性,还采用了耦合结构来建立短期和长期提前期的降水预报模型。研究区域为石门水库,分析期为2001年至2009年。结果表明,禁忌搜索结合双模型混合法和耦合结构,选择了最优的初始ANFIS参数,为计算提供了有利条件。短期或长期的预报时间范围对台风降水预报的效率和高可靠性预报。

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