The back propagation based on the modified group method of data-handling network for oilfield production forecasting
Abstract In this paper, a novel hybrid forecasting model combining modified group method of data handling (GMDH) and back propagation (BP) is introduced for time series oilfield production forecasting. The proposed model takes advantages of both the modified GMDH networks in effective parameter sele...
Main Authors: | , , , , , , |
---|---|
Format: | Article |
Language: | English |
Published: |
SpringerOpen
2018-11-01
|
Series: | Journal of Petroleum Exploration and Production Technology |
Subjects: | |
Online Access: | http://link.springer.com/article/10.1007/s13202-018-0582-9 |
id |
doaj-3f46b51d84f14aa79ff9870d67e678af |
---|---|
record_format |
Article |
spelling |
doaj-3f46b51d84f14aa79ff9870d67e678af2020-11-25T01:40:26ZengSpringerOpenJournal of Petroleum Exploration and Production Technology2190-05582190-05662018-11-01921285129310.1007/s13202-018-0582-9The back propagation based on the modified group method of data-handling network for oilfield production forecastingJia Guo0Hongmei Wang1Fajun Guo2Wei Huang3Huipeng Yang4Kai Yang5Hong Xie6Exploration and Development Institute, PetroChina Huabei Oilfield CompanyExploration and Development Institute, PetroChina Huabei Oilfield CompanyExploration and Development Institute, PetroChina Huabei Oilfield CompanyExploration and Development Institute, PetroChina Huabei Oilfield CompanyExploration and Development Institute, PetroChina Huabei Oilfield CompanyExploration and Development Institute, PetroChina Huabei Oilfield CompanyCNPC Bohai Drilling Engineering Company Second Logging CompanyAbstract In this paper, a novel hybrid forecasting model combining modified group method of data handling (GMDH) and back propagation (BP) is introduced for time series oilfield production forecasting. The proposed model takes advantages of both the modified GMDH networks in effective parameter selection and the BP network in excellent nonlinear mapping and provides a robust simulation ability for oilfield production with higher precision. Various production parameters of an actual oilfield were utilized to analyze and test the annual output predicted by proposed model (modified GMDH-BP). The performance of the proposed model was compared with the multiple linear regression (MLR), GMDH, modified GMDH, BP, and the hybrid model combining group method of data handling and back propagation (GMDH-BP) using time series annual production data. The relative error, correlation coefficient (R), root mean square error, mean absolute percentage of error, and scatter index were utilized to investigate the performance of the presented models. The evaluation results indicate that the hybrid model provides more accurate production forecasts compared to other models and exhibits a robust simulation ability for capturing the nonlinear relation of complex production time series prediction of oilfield.http://link.springer.com/article/10.1007/s13202-018-0582-9Oilfield productionModified GMDHBPVariable selectionForecasting |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Jia Guo Hongmei Wang Fajun Guo Wei Huang Huipeng Yang Kai Yang Hong Xie |
spellingShingle |
Jia Guo Hongmei Wang Fajun Guo Wei Huang Huipeng Yang Kai Yang Hong Xie The back propagation based on the modified group method of data-handling network for oilfield production forecasting Journal of Petroleum Exploration and Production Technology Oilfield production Modified GMDH BP Variable selection Forecasting |
author_facet |
Jia Guo Hongmei Wang Fajun Guo Wei Huang Huipeng Yang Kai Yang Hong Xie |
author_sort |
Jia Guo |
title |
The back propagation based on the modified group method of data-handling network for oilfield production forecasting |
title_short |
The back propagation based on the modified group method of data-handling network for oilfield production forecasting |
title_full |
The back propagation based on the modified group method of data-handling network for oilfield production forecasting |
title_fullStr |
The back propagation based on the modified group method of data-handling network for oilfield production forecasting |
title_full_unstemmed |
The back propagation based on the modified group method of data-handling network for oilfield production forecasting |
title_sort |
back propagation based on the modified group method of data-handling network for oilfield production forecasting |
publisher |
SpringerOpen |
series |
Journal of Petroleum Exploration and Production Technology |
issn |
2190-0558 2190-0566 |
publishDate |
2018-11-01 |
description |
Abstract In this paper, a novel hybrid forecasting model combining modified group method of data handling (GMDH) and back propagation (BP) is introduced for time series oilfield production forecasting. The proposed model takes advantages of both the modified GMDH networks in effective parameter selection and the BP network in excellent nonlinear mapping and provides a robust simulation ability for oilfield production with higher precision. Various production parameters of an actual oilfield were utilized to analyze and test the annual output predicted by proposed model (modified GMDH-BP). The performance of the proposed model was compared with the multiple linear regression (MLR), GMDH, modified GMDH, BP, and the hybrid model combining group method of data handling and back propagation (GMDH-BP) using time series annual production data. The relative error, correlation coefficient (R), root mean square error, mean absolute percentage of error, and scatter index were utilized to investigate the performance of the presented models. The evaluation results indicate that the hybrid model provides more accurate production forecasts compared to other models and exhibits a robust simulation ability for capturing the nonlinear relation of complex production time series prediction of oilfield. |
topic |
Oilfield production Modified GMDH BP Variable selection Forecasting |
url |
http://link.springer.com/article/10.1007/s13202-018-0582-9 |
work_keys_str_mv |
AT jiaguo thebackpropagationbasedonthemodifiedgroupmethodofdatahandlingnetworkforoilfieldproductionforecasting AT hongmeiwang thebackpropagationbasedonthemodifiedgroupmethodofdatahandlingnetworkforoilfieldproductionforecasting AT fajunguo thebackpropagationbasedonthemodifiedgroupmethodofdatahandlingnetworkforoilfieldproductionforecasting AT weihuang thebackpropagationbasedonthemodifiedgroupmethodofdatahandlingnetworkforoilfieldproductionforecasting AT huipengyang thebackpropagationbasedonthemodifiedgroupmethodofdatahandlingnetworkforoilfieldproductionforecasting AT kaiyang thebackpropagationbasedonthemodifiedgroupmethodofdatahandlingnetworkforoilfieldproductionforecasting AT hongxie thebackpropagationbasedonthemodifiedgroupmethodofdatahandlingnetworkforoilfieldproductionforecasting AT jiaguo backpropagationbasedonthemodifiedgroupmethodofdatahandlingnetworkforoilfieldproductionforecasting AT hongmeiwang backpropagationbasedonthemodifiedgroupmethodofdatahandlingnetworkforoilfieldproductionforecasting AT fajunguo backpropagationbasedonthemodifiedgroupmethodofdatahandlingnetworkforoilfieldproductionforecasting AT weihuang backpropagationbasedonthemodifiedgroupmethodofdatahandlingnetworkforoilfieldproductionforecasting AT huipengyang backpropagationbasedonthemodifiedgroupmethodofdatahandlingnetworkforoilfieldproductionforecasting AT kaiyang backpropagationbasedonthemodifiedgroupmethodofdatahandlingnetworkforoilfieldproductionforecasting AT hongxie backpropagationbasedonthemodifiedgroupmethodofdatahandlingnetworkforoilfieldproductionforecasting |
_version_ |
1725045866191912960 |