地震参数的尺度不变性及其可能的预测算法

IF 0.3 Q4 GEOCHEMISTRY & GEOPHYSICS Seismic Instruments Pub Date : 2023-03-21 DOI:10.3103/S0747923922080187
D. G. Taimazov
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引用次数: 1

摘要

在给定的能量和时空限制下,提出了一种预测震源坐标、能量等级和预期强震实现时间的算法。它基于地震过程在宽能量范围内的自相似性,并包括从监测区域的地震目录中形成相对强烈的地震样本。在地震准备带,确定了地震周期最后十分之一发生的具有代表性的类弱地震的震中分布性质:特征向量。它们被简化为尺度不变的形式,并作为“样本”,用于与从目录中确定的预测(虚拟)地震的特征向量进行比较。如果有足够的信息,考虑到它们的权重系数,将每个准备区的平均震源机制的张量参数添加到特征向量中。假设采用最小二乘法(LSM),根据虚拟地震与样品参数的最佳拟合准则进行预测。该算法设想通过回溯预测进行测试,并创建一个具有机器学习功能的计算机程序来实现测试。在测试过程中,确定了预测参数估计中的预期误差。
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Scale Invariance of Earthquake Parameters and a Possible Algorithm for Their Prediction

An algorithm is described, proposed by the author for predicting the coordinates of sources, energy classes, and time of realization of expected strong earthquakes within given energy and spatiotemporal limits. It is based on the self-similarity of a seismic process in a wide energy range and includes the formation of a sampling of relatively strong earthquakes from a seismic catalog for a monitored area. In earthquake preparation zones, the nature of the epicentral distribution of weak earthquakes of representative classes that occurred during the last tenth of the seismic cycle is determined: feature vectors. They are reduced to a scale-invariant form and serve as “samples” for comparison with feature vectors of predicted (virtual) earthquakes determined from the catalog. If sufficient information is available, the parameters of the tensors of the average focal mechanisms for each preparation zone are added to the feature vectors, taking into account their weight coefficients. The prediction is assumed to be done by the least squares method (LSM), based on the criterion of best fit of all parameters for virtual earthquakes and the samples. The algorithm envisages testing by retroprediction and the creation of a computer program with machine learning for its implementation. During testing, the expected errors in the estimates of the predicted parameters are determined.

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来源期刊
Seismic Instruments
Seismic Instruments GEOCHEMISTRY & GEOPHYSICS-
自引率
44.40%
发文量
45
期刊介绍: Seismic Instruments is a journal devoted to the description of geophysical instruments used in seismic research. In addition to covering the actual instruments for registering seismic waves, substantial room is devoted to solving instrumental-methodological problems of geophysical monitoring, applying various methods that are used to search for earthquake precursors, to studying earthquake nucleation processes and to monitoring natural and technogenous processes. The description of the construction, working elements, and technical characteristics of the instruments, as well as some results of implementation of the instruments and interpretation of the results are given. Attention is paid to seismic monitoring data and earthquake catalog quality Analysis.
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