The Learning of Multivariate Adaptive Regression Splines (MARS) Model in Rainfall-Runoff Processes at Pahang River Catchment

D.A. Halid, I. Atan, J. Jaafar, Y. Ashaari, S.N. Mohamed, M.B. Samsudin, A. Baki
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Abstract

Abstract Recently, a novel data mining technique, Multivariate Adaptive Regression Splines (MARS) has begun attracted attention from several hydrological researchers because their application is relatively new in modelling hydrological processes. The power of this approach has been proven in variety learning problems such as financial analysis, species distributions modelling, and doweled pavement performance modelling. Therefore, the objective of this paper is to investigate the performance of MARS model in capture the rainfall-runoff processes at river catchment of Malaysia. Pahang River has been selected as area of study. 30-years data set of daily rainfall and runoff at upstream tributaries of Pahang River were used to developed and validate the capability of MARS model in flood prediction. The effect of different length of record data to performance of MARS model was also examined by arranged the data into 5-years data set, 10 years data set, 20 years data set, and 30 years data set. All these data sets used 1-year data of 2003 for validation process while the others were applied for calibration. Simulation results showed that MARS model was able to learn the rainfall-runoff processes in Pahang River catchment and the model performance improved due to the longer period of data.
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彭亨河流域降雨径流过程的多元自适应回归样条(MARS)模型学习
近年来,一种新的数据挖掘技术——多元自适应回归样条(multi - Adaptive Regression spline, MARS)由于其在水文过程建模中的应用相对较新,开始受到一些水文研究者的关注。这种方法的力量已经在各种学习问题中得到了证明,如财务分析、物种分布建模和钻孔路面性能建模。因此,本文的目的是研究MARS模型在捕获马来西亚河流集水区降雨径流过程中的性能。彭亨河被选为研究区域。利用彭亨河上游支流30年的日降水和径流数据集,开发并验证了MARS模型在洪水预测中的能力。通过将记录数据分为5年、10年、20年和30年,考察了记录数据长度对MARS模型性能的影响。所有数据集均采用2003年1年的数据进行验证,其余数据集采用校准。模拟结果表明,MARS模型能够学习彭亨河流域的降雨径流过程,并且由于数据周期较长,模型性能有所提高。
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