With the rapid development of oilfield exploration and development technology and the continuous improvement of automation and informationization, the petroleum industry has entered the era of digitalization and intelligence. Surveillance data including pressure and saturation play an increasing role in reservoir development machine learning modelling. A large amount of highquality data can enhance the accuracy and robustness of the neural network model. However, during actual reservoir development, not all data are easily available. Data acquisition is limited to highcost tests techniques, pressure bulid-up test, reservoir saturation test, and production logging test etc. In this study, Huang develops a novel workflow to forecast and restore missing well head flow pressure (WHFP) by utilizing Random Forest (RF) algorithms based on the actual dataset obtained from the middle east carbonate reservoir. To evaluate the effect of predicted pressure results, Huang employed predicted WHFP into production prediction neural network model. With the support of predicted WHFP, the quality and accuracy of neural network production prediction model is much improved. This study provides a lowcost and high-precision WHFP prediction and restoration method for reservoir engineers in decision making.