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Drought forecasting through statistical models using standardised precipitation index: a systematic review and meta-regression analysis

机译:通过使用标准化降水指数的统计模型进行干旱预测:系统审查和元回归分析

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Quality and reliable drought prediction is essential for mitigation strategies and planning in disaster-stricken regions globally. Prediction models such as empirical or data-driven models play a fundamental role in forecasting drought. However, selecting a suitable prediction model remains a challenge because of the lack of succinct information available on model performance. Therefore, this review evaluated the best model for drought forecasting and determined which differences if any were present in model performance using standardised precipitation index (SPI). In addition, the most effective combination of the SPI with its respective timescale and lead time was investigated. The effectiveness of data-driven models was analysed using meta-regression analysis by applying a linear mixed model to the coefficient of determination and the root mean square error of the validated model results. Wavelet-transformed neural networks had superior performance with the highest correlation and minimum error. Preprocessing data to eliminate non-stationarity performed substantially better than did the regular artificial neural network (ANN) model. Additionally, the best timescale to calculate the SPI was 24 and 12 months and a lead time of 1-3 months provided the most accurate forecasts. Studies from China and Sicily had the most variation based on geographical location as a random effect; while studies from India rendered consistent results overall. Variation in the result can be attributed to geographical differences, seasonal influence, incorporation of climate indices and author bias. Conclusively, this review recommends use of the wavelet-based ANN (WANN) model to forecast drought indices.
机译:质量可靠的干旱预测对于全球灾害地区的缓解策略和规划至关重要。诸如经验或数据驱动模型的预测模型在预测干旱方面发挥着基本作用。然而,选择合适的预测模型仍然是一个挑战,因为缺乏在模型性能上可用的简洁信息。因此,本综述评估了干旱预测的最佳模型,并确定了使用标准化降水指数(SPI)在模型性能中存在的差异。此外,还研究了SPI最有效的与其各自的时间尺度和提前期结合。通过将线性混合模型应用于确定系数和验证模型结果的根均方误差来分析数据驱动模型的有效性。小波变换的神经网络具有卓越的性能,相关性最高和最小误差。预处理数据以消除非公平性的基本上比常规人工神经网络(ANN)模型更好。此外,计算SPI的最佳时间尺度为24至12个月,提供1-3个月的优惠时间,提供最准确的预测。中国和西西里岛的研究基于地理位置为随机效应的最大变化;虽然来自印度的研究整体呈现一致的结果。结果的变异可以归因于地理差异,季节性影响,气候指数的融合和作者偏见。结论,本综述建议使用基于小波的ANN(WANN)模型来预测干旱指数。

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