Matches in SemOpenAlex for { <https://semopenalex.org/work/W3178986468> ?p ?o ?g. }
- W3178986468 endingPage "1194" @default.
- W3178986468 startingPage "1194" @default.
- W3178986468 abstract "Oil production forecasting is one of the essential processes for organizations and governments to make necessary economic plans. This paper proposes a novel hybrid intelligence time series model to forecast oil production from two different oil fields in China and Yemen. This model is a modified ANFIS (Adaptive Neuro-Fuzzy Inference System), which is developed by applying a new optimization algorithm called the Aquila Optimizer (AO). The AO is a recently proposed optimization algorithm that was inspired by the behavior of Aquila in nature. The developed model, called AO-ANFIS, was evaluated using real-world datasets provided by local partners. In addition, extensive comparisons to the traditional ANFIS model and several modified ANFIS models using different optimization algorithms. Numeric results and statistics have confirmed the superiority of the AO-ANFIS over traditional ANFIS and several modified models. Additionally, the results reveal that AO is significantly improved ANFIS prediction accuracy. Thus, AO-ANFIS can be considered as an efficient time series tool." @default.
- W3178986468 created "2021-07-19" @default.
- W3178986468 creator A5034804093 @default.
- W3178986468 creator A5035154661 @default.
- W3178986468 creator A5042653526 @default.
- W3178986468 creator A5057217204 @default.
- W3178986468 creator A5062718839 @default.
- W3178986468 creator A5067624332 @default.
- W3178986468 creator A5078519359 @default.
- W3178986468 date "2021-07-09" @default.
- W3178986468 modified "2023-10-16" @default.
- W3178986468 title "Optimized ANFIS Model Using Aquila Optimizer for Oil Production Forecasting" @default.
- W3178986468 cites W1998811171 @default.
- W3178986468 cites W2019207321 @default.
- W3178986468 cites W2030609609 @default.
- W3178986468 cites W2036166940 @default.
- W3178986468 cites W2055571659 @default.
- W3178986468 cites W2070503442 @default.
- W3178986468 cites W2490556860 @default.
- W3178986468 cites W2538597852 @default.
- W3178986468 cites W2577195726 @default.
- W3178986468 cites W2609484128 @default.
- W3178986468 cites W2745823186 @default.
- W3178986468 cites W2779376425 @default.
- W3178986468 cites W2783875661 @default.
- W3178986468 cites W2807838313 @default.
- W3178986468 cites W2885505527 @default.
- W3178986468 cites W2894821558 @default.
- W3178986468 cites W2898296699 @default.
- W3178986468 cites W2898604056 @default.
- W3178986468 cites W2900717565 @default.
- W3178986468 cites W2901542073 @default.
- W3178986468 cites W2913309878 @default.
- W3178986468 cites W2966066480 @default.
- W3178986468 cites W2969633730 @default.
- W3178986468 cites W2974496939 @default.
- W3178986468 cites W2979550060 @default.
- W3178986468 cites W2981842332 @default.
- W3178986468 cites W2984376566 @default.
- W3178986468 cites W2994216106 @default.
- W3178986468 cites W3003462583 @default.
- W3178986468 cites W3025444948 @default.
- W3178986468 cites W3083352469 @default.
- W3178986468 cites W3089986665 @default.
- W3178986468 cites W3092123241 @default.
- W3178986468 cites W3111063581 @default.
- W3178986468 cites W3115044086 @default.
- W3178986468 cites W3122797802 @default.
- W3178986468 cites W3128328166 @default.
- W3178986468 cites W3139484821 @default.
- W3178986468 cites W2280502683 @default.
- W3178986468 doi "https://doi.org/10.3390/pr9071194" @default.
- W3178986468 hasPublicationYear "2021" @default.
- W3178986468 type Work @default.
- W3178986468 sameAs 3178986468 @default.
- W3178986468 citedByCount "64" @default.
- W3178986468 countsByYear W31789864682021 @default.
- W3178986468 countsByYear W31789864682022 @default.
- W3178986468 countsByYear W31789864682023 @default.
- W3178986468 crossrefType "journal-article" @default.
- W3178986468 hasAuthorship W3178986468A5034804093 @default.
- W3178986468 hasAuthorship W3178986468A5035154661 @default.
- W3178986468 hasAuthorship W3178986468A5042653526 @default.
- W3178986468 hasAuthorship W3178986468A5057217204 @default.
- W3178986468 hasAuthorship W3178986468A5062718839 @default.
- W3178986468 hasAuthorship W3178986468A5067624332 @default.
- W3178986468 hasAuthorship W3178986468A5078519359 @default.
- W3178986468 hasBestOaLocation W31789864681 @default.
- W3178986468 hasConcept C119857082 @default.
- W3178986468 hasConcept C124101348 @default.
- W3178986468 hasConcept C126255220 @default.
- W3178986468 hasConcept C139719470 @default.
- W3178986468 hasConcept C143724316 @default.
- W3178986468 hasConcept C151730666 @default.
- W3178986468 hasConcept C154945302 @default.
- W3178986468 hasConcept C162324750 @default.
- W3178986468 hasConcept C186108316 @default.
- W3178986468 hasConcept C195975749 @default.
- W3178986468 hasConcept C2778348673 @default.
- W3178986468 hasConcept C2988105877 @default.
- W3178986468 hasConcept C33923547 @default.
- W3178986468 hasConcept C41008148 @default.
- W3178986468 hasConcept C58166 @default.
- W3178986468 hasConcept C86803240 @default.
- W3178986468 hasConceptScore W3178986468C119857082 @default.
- W3178986468 hasConceptScore W3178986468C124101348 @default.
- W3178986468 hasConceptScore W3178986468C126255220 @default.
- W3178986468 hasConceptScore W3178986468C139719470 @default.
- W3178986468 hasConceptScore W3178986468C143724316 @default.
- W3178986468 hasConceptScore W3178986468C151730666 @default.
- W3178986468 hasConceptScore W3178986468C154945302 @default.
- W3178986468 hasConceptScore W3178986468C162324750 @default.
- W3178986468 hasConceptScore W3178986468C186108316 @default.
- W3178986468 hasConceptScore W3178986468C195975749 @default.
- W3178986468 hasConceptScore W3178986468C2778348673 @default.
- W3178986468 hasConceptScore W3178986468C2988105877 @default.
- W3178986468 hasConceptScore W3178986468C33923547 @default.
- W3178986468 hasConceptScore W3178986468C41008148 @default.