We consider the application of machine learning to the evaluation of geothermal resource potential. A supervised learning problem is defined where maps of 10 geological and geophysical features within the state of Nevada, USA are used to define geothermal potential across a broad region. We have available a relatively small set of positive training sites (known resources or active power plants) and negative training sites (known drill sites with unsuitable geothermal conditions) and use these to constrain and optimize artificial neural networks for this classification task. The main objective is to predict the geothermal resource potential at unknown sites within a large geographic area where the defining features are known. These predictions could be used to target promising areas for further detailed investigations. We describe the evolution of our work from defining a specific neural network architecture to training and optimization trials. Upon analysis we expose the inevitable problems of model variability and resulting prediction uncertainty. Finally, to address these problems we apply the concept of Bayesian neural networks, a heuristic approach to regularization in network training, and make use of the practical interpretation of the formal uncertainty measures they provide.
翻译:我们考虑在评估地热资源潜力时应用机器学习方法; 确定内华达州10个地质和地球物理特征的地图,用美国来界定地热潜力; 我们拥有数量相对较少的积极培训场地(已知资源或活跃电厂)和负培训场地(已知地热条件不适合的钻井场地),并用这些场地限制和优化人造神经网络,以完成这一分类任务; 主要目标是预测在已知确定特征的广大地理区域内未知地点的地热资源潜力; 这些预测可用于针对有希望的地区进行进一步的详细调查; 我们描述我们从确定特定的神经网络结构到培训和优化试验的工作演变情况; 在分析后,我们暴露了模型变化的必然问题和由此产生的预测不确定性; 最后,我们运用Bayesian神经网络的概念来解决这些问题,这是在网络培训中规范化的超自然学方法,并使用对它们所提供的正式不确定性措施的实际解释。