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Seismic Detection Model Using Machine Learning to Protect the Public from Landslide and Earthquake Disasters in Kenya

机译:地震检测模型采用机器学习保护公众免受肯尼亚山脉和地震灾害的影响

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Earthquakes and tremors are a common occurrence throughout the world, mostly in China, Japan and Indonesia. In Kenya, we experience a lot of tremors and landslides during the rainy seasons that have extensive negative social, economic, and environmental impacts. These damages include loss of human life, financial loss and destruction of infrastructure. This becomes a lagging factor towards achieving the Vision 2030 and Sustainable Development Goals (SDGs). This study used secondary data, obtained from World Wide Standardized Seismograph Station (WWSSSN) in Kilimambogo. Stochastic artificial neural network was adopted to identify prone areas to the said natural disasters, measure the socioeconomic impacts and build a predictive model for landslides, tremor and earthquakes in Kenya. It was evident that landslides are destructive in nature through observable measurable impacts on people. They increase the social and economic burden on the affected people. 64.76% of the measurable impacts affect human beings directly while the rest affect cattle and crops. Along the Great rift valley, most earthquakes and landslides took place. This is attributed to the active seismic activities. Kenya experiences earthquakes of magnitude m 4. Our model achieved root mean square of 0.435. Furthermore, we got R~2=0.80 for testing dataset. This implied that 80% of data was trainable by the model. Therefore, the predictive neural network model is efficient and accurate in forecasting, and more importantly is a good fit model.
机译:地震和震颤是全世界的常见发生,主要是在中国,日本和印度尼西亚。在肯尼亚,我们在雨季经历了很多震颤和滑坡,这些季节具有广泛的负面社会,经济和环境影响。这些损害赔偿包括人类生命丧失,基础设施的财务损失和破坏。这成为实现视觉2030和可持续发展目标(SDGS)的滞后因素。本研究使用了从乞力撞米的世界宽标准化地震仪站(WWSSSN)获得的二级数据。随机人工神经网络被采用识别俯卧的地区对上述自然灾害,衡量社会经济影响,并为肯尼亚的山体滑坡,震颤和地震构建预测模型。很明显,山体滑坡通过可观察到的人们的可衡量影响,山体滑坡是破坏性的。他们提高了受影响的人的社会和经济负担。 64.76%的可衡量影响直接影响人类,而其余影响牛和作物。沿着伟大的裂谷,大多数地震和山体滑坡发生了。这归因于积极的地震活动。肯尼亚经历了大小的地震m& 4.我们的模型实现了0.435的根均线。此外,对于测试数据集,我们得到了R〜2 = 0.80。这意味着80%的数据由模型培训。因此,预测神经网络模型在预测中是有效和准确的,更重要的是良好的拟合模型。

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