Long-Term Forecasting and Optimization of Non-Stationary Well Operation Modes Through Neural Networks Simulation

2021 ◽  
Author(s):  
Roman Yurievich Ponomarev ◽  
Vladimir Evgenievich Vershinin

Abstract The article discusses the results of long-term forecasting of non-stationary technological modes of production wells using neural network modeling methods. The main difficulty in predicting unsteady modes is to reproduce the response of producing wells to a sharp change in the mode of one of the wells. Such jumps, as a rule, lead to a rapid increase in the forecast error. Training and forecasting of modes was carried out on the data of numerical hydrodynamic modeling. Two fields with significantly different properties, the number of wells and their modes of operation were selected as objects of modeling. Non-stationarity was set by changing the regime on one or several production wells at different points in time. The LSTM recurrent neural network carried out forecasting of production technological parameters. This made it possible to take into account the time-lagging influence of the wells on each other. It is shown that the LSTM neural network allows predicting unsteady technological modes of well operation with an accuracy of up to 5% for a period of 10 years. The solution of the problem of optimization of oil production is considered on the example of one of the models. It is shown that the optimal solution found by the neural network differs from the solution found by hydrodynamic modeling by 5%. At the same time, a significant gain in calculation time was achieved.

2012 ◽  
Vol 217-219 ◽  
pp. 809-814 ◽  
Author(s):  
Jin Lan Gao

Photovoltaic cell is the central part of solar photovoltaic power generation system, so how to establish effective and accurate photovoltaic cell model is crucial. Based on the research of PV cell characteristic as well as the mind evolutionary algorithm and neural network, this paper put forward a new kind of BP neural network modeling method based on MEA, and used for photovoltaic battery modeling. In this model, using MEA for neural network parameter optimization to overcome defects of the traditional BP neural network which has slow convergence speed, easy to fall into local optimal solution and other shortcomings, and then improved the modeling accuracy and reliability. The test and simulation results showed that the improved neural network model is high precision, little error, short training time and it is effective.


2011 ◽  
Vol 33 (3) ◽  
pp. 215-233 ◽  
Author(s):  
Pilar Gómez-Gil ◽  
Juan Manuel Ramírez-Cortes ◽  
Saúl E. Pomares Hernández ◽  
Vicente Alarcón-Aquino

2013 ◽  
pp. 143-155
Author(s):  
A. Klepach ◽  
G. Kuranov

The role of the prominent Soviet economist, academician A. Anchishkin (1933—1987), whose 80th birth anniversary we celebrate this year, in the development of ideas and formation of economic forecasting in the country at the time when the directive planning acted as a leading tool of economic management is explored in the article. Besides, Anchishkin’s special role is noted in developing a comprehensive program of scientific and technical progress, an information basis for working out long-term forecasts of the country’s development, moreover, his contribution to the creation of long-term forecasting methodology and improvement of the statistical basis for economic analysis and economic planning. The authors show that social and economic forecasting in the period after 1991, which has undertaken a number of functions of economic planning, has largely relied on further development of Anchishkin’s ideas, at the same time responding to new challenges for the Russian economy development during its entry into the world economic system.


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