结合钻井数据和伽马射线,利用机器学习预测地质力学参数

M. Martinelli, I. Colombo, E. Russo
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摘要

这项工作的目的是开发一种快速可靠的方法,用于利用地面测井数据进行钻井时的地质力学参数评估。地质力学参数通常是通过岩心或声波测井来评估的,这通常是昂贵的,有时很难获得。本文提出了一种新颖的方法,即使用机器学习算法从钻井参数和伽马射线测井数据中计算杨氏模量。该方法将典型的录井钻井数据(ROP、RPM、扭矩、流量测量、钻压和钻压)、XRF数据和测井数据(声波测井、体积密度、伽马射线)与几种机器学习技术相结合。这些模型是在科威特同一盆地、同一地质单元但不同储层的三口井的数据上进行训练和测试的。声波测井和体积密度用于评估地质力学参数(如杨氏模量)并训练模型。训练阶段和超参数调整使用来自单井的数据进行。然后将该模型与其他两口井之前未见过的数据进行了测试。经过训练的模型能够预测测试井的杨氏模量,均方根误差约为12 GPa。本文给出的实例表明,用钻井参数和来自同一井的伽马射线训练的模型能够预测同一盆地不同井的杨氏模量。这些结果突出了该方法的潜力,并指出了储层表征的几个含义。事实上,一旦模型得到训练,就有可能仅使用地面测井数据来预测同一盆地不同井的杨氏模量。
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Predict Geomechanical Parameters with Machine Learning Combining Drilling Data and Gamma Ray
The aim of this work is the development of a fast and reliable method for geomechanical parameters evaluation while drilling using surface logging data. Geomechanical parameters are usually evaluated from cores or sonic logs, which are typically expensive and sometimes difficult to obtain. A novel approach is here proposed, where machine learning algorithms are used to calculate the Young's Modulus from drilling parameters and the gamma ray log. The proposed method combines typical mud logging drilling data (ROP, RPM, Torque, Flow measurements, WOB and SPP), XRF data and well log data (Sonic logs, Bulk Density, Gamma Ray) with several machine learning techniques. The models were trained and tested on data coming from three wells drilled in the same basin in Kuwait, in the same geological units but in different reservoirs. Sonic logs and bulk density are used to evaluate the geomechanical parameters (e.g. Young's Modulus) and to train the model. The training phase and the hyperparameter tuning were performed using data coming from a single well. The model was then tested against previously unseen data coming from the other two wells. The trained model is able to predict the Young's modulus in the test wells with a root mean squared error around 12 GPa. The example here provided demonstrates that a model trained with drilling parameters and gamma ray coming from one well is able to predict the Young Modulus of different wells in the same basin. These outcomes highlight the potentiality of this procedure and point out several implications for the reservoir characterization. Indeed, once the model has been trained, it is possible to predict the Young's Modulus in different wells of the same basin using only surface logging data.
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