利用混合机器学习技术和网格降水数据对监测不足的河流流域进行高级排水模拟

Reza Morovati, Ozgur Kisi
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摘要

本研究解决了在伊朗卡尔赫流域使用网格降水数据集和数据驱动建模时利用不完整的长期排水数据所面临的挑战。利用亚洲降水-高分辨率观测数据整合评估(APHRODITE)、全球降水气候学中心(GPCC)和气候研究单位(CRU)的降水数据,应用了多层感知器神经网络(MLPNN)这一降雨-径流(R-R)模型。MLPNN 使用 Levenberg-Marquardt 算法进行训练,并使用非优势排序遗传算法-II(NSGA-II)进行优化。输入数据通过主成分分析(PCA)和奇异值分解(SVD)进行了预处理。本研究探讨了两种方案:方案 1(S1)使用原位数据进行校准,网格数据集数据进行测试,而方案 2(S2)则对每个数据集分别进行校准和测试。研究结果表明,APHRODITE 在 S1 中表现优异,而在 S2 中,所有数据集的结果都有所改善。APHRODITE 的 S2-PCA-NSGA-II 和 GPCC 和 CRU 的 S2-SVD-NSGA-II 混合应用取得了最佳结果。本研究的结论是,网格降水数据集经适当校准后,可显著提高径流模拟精度,突出了降雨-径流建模中偏差校正的重要性。需要强调的是,这种建模方法可能不适用于因开发干预或人为气候变化影响而导致集水区发生重大变化的情况。这种局限性突出表明,需要能够适应不断变化的流域条件的动态建模方法。
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Utilizing Hybrid Machine Learning Techniques and Gridded Precipitation Data for Advanced Discharge Simulation in Under-Monitored River Basins
This study addresses the challenge of utilizing incomplete long-term discharge data when using gridded precipitation datasets and data-driven modeling in Iran’s Karkheh basin. The Multilayer Perceptron Neural Network (MLPNN), a rainfall-runoff (R-R) model, was applied, leveraging precipitation data from the Asian Precipitation—Highly Resolved Observational Data Integration Toward Evaluation (APHRODITE), Global Precipitation Climatology Center (GPCC), and Climatic Research Unit (CRU). The MLPNN was trained using the Levenberg–Marquardt algorithm and optimized with the Non-dominated Sorting Genetic Algorithm-II (NSGA-II). Input data were pre-processed through principal component analysis (PCA) and singular value decomposition (SVD). This study explored two scenarios: Scenario 1 (S1) used in situ data for calibration and gridded dataset data for testing, while Scenario 2 (S2) involved separate calibrations and tests for each dataset. The findings reveal that APHRODITE outperformed in S1, with all datasets showing improved results in S2. The best results were achieved with hybrid applications of the S2-PCA-NSGA-II for APHRODITE and S2-SVD-NSGA-II for GPCC and CRU. This study concludes that gridded precipitation datasets, when properly calibrated, significantly enhance runoff simulation accuracy, highlighting the importance of bias correction in rainfall-runoff modeling. It is important to emphasize that this modeling approach may not be suitable in situations where a catchment is undergoing significant changes, whether due to development interventions or the impacts of anthropogenic climate change. This limitation highlights the need for dynamic modeling approaches that can adapt to changing catchment conditions.
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