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Novel Sparse Bayesian Learning and Its Application to Ground Motion Pattern Recognition

机译:新型稀疏贝叶斯学习及其在地面运动模式识别中的应用

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摘要

A novel sparse Bayesian learning for correlated error (SBL-CE) algorithm is proposed to automatically search for an optimal model class with relevance features in regression problems of pattern recognition based on measured data and extracted features. The proposed SBL-CE algorithm is designed to overcome the disadvantage in the traditional optimal model searching approach for ground motion pattern recognition, which requires a huge or even intractable computational effort to examine a large number of different combinations of extracted features. The proposed SBL-CE algorithm introduces sophisticated hyperparameterization on the regression parameter vector in the ground motion prediction model, aiming to conduct a continuous optimal model search even when the number of extracted features is large. In addition, the prediction error independence assumption in the traditional learning approach is relaxed, so the derived optimization strategy can be applied to ground motion pattern recognition. The proposed SBL-CE algorithm is then used to analyze a database of strong ground motion records in the Tangshan region of China. It is shown that the model by the proposed SBL-CE algorithm is superior compared to the traditional models because it is capable of properly recognizing the pattern of ground motion in the target seismic region with high accuracy and robustness. (C) 2017 American Society of Civil Engineers.
机译:提出了一种新颖的稀疏贝叶斯相关误差学习(SBL-CE)算法,该算法基于实测数据和提取特征,在模式识别回归问题中自动搜索具有相关特征的最优模型类别。提出的SBL-CE算法旨在克服地面运动模式识别的传统最佳模型搜索方法中的缺点,该方法需要大量甚至难以处理的计算工作来检查提取特征的大量不同组合。提出的SBL-CE算法在地面运动预测模型的回归参数向量上引入了复杂的超参数化,旨在即使在提取的特征数量很大时也可以进行连续的最优模型搜索。另外,放宽了传统学习方法中预测误差的独立性假设,因此可以将推导的优化策略应用于地震动模式识别。然后,将提出的SBL-CE算法用于分析中国唐山地区的强地面运动记录数据库。结果表明,所提出的SBL-CE算法与传统模型相比具有优越性,因为它能够正确,准确地识别目标地震区域内的地震动模式。 (C)2017年美国土木工程师学会。

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