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RETRACTED ARTICLE: ANN and fuzzy based household energy consumption prediction with high accuracy

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This article was retracted on 23 June 2022

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Abstract

Timeline Data is gathered according to different time intervals, which are day after day after week or month after month, for updating properties and rationing institutional resilience it is important to consider the usage of systems and lead to reduced lifespan Such details illustrate the use of the system as well as its interaction with time, like day, week, month and time of year, and the relation between the equipment and a relative, essential factors for the effects of the usage of their potency and the expected movement by customers. This is because it is not significant to determine the various relations between specific devices utilizing concurrent data. In addition, precise relations between interval-based instances in which specific system usage continue for certain duration cannot be calculated. To address these difficulties, we propose supervised energy time series data clustering and frequent pattern mining analysis as well as a Bayesian network forecast for energy use. However, the AI model is a univariate construct based on past use-values. Neural Networks have the favored position that can estimate nonlinear limits. Everything together they have an approximate usage of vitality, the ANN adds in a planning knowledge table between the use of vitality (EC) and its determinants. SVM is capable of reliably calculating knowledge on time structure while the basic system mechanism is frequently nonlinear and not set. Also, certain nonlinear mechanisms such as multilayer perceptron have been shown to flank SVM. The single data has been converted into a multivariate and the ANFIS has been selected as it transmits both the AI (ANN) and Fuzzy Inference Method (FIS) points of concern. ANFIS yields the accuracy, RMSE, and MAPE among genuine and anticipated power utilization of 91.19%, 0.4076 and 0.9049 which is moderately low.

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References

  • Abdel-Aal RE, Al-Garni AZ (1997) Forecasting monthly electric energy consumption in eastern Saudi Arabia using univariate time-series analysis. Energy 22(11):1059–1069

    Article  Google Scholar 

  • Adhikari R, Agrawal RK (2013). An introductory study on time series modeling and forecasting. arXiv preprint arXiv:1302.6613.

  • Amara F, Agbossou K, Dubé Y, Kelouwani S, Cardenas A, Hosseini SS (2019) A residual load modeling approach for household short-term load forecasting application. Energy Buildings 187:132–143

    Article  Google Scholar 

  • Bianco V, Manca O, Nardini S (2009) Electricity consumption forecasting in Italy using linear regression models. Energy 34(9):1413–1421

    Article  Google Scholar 

  • Bose M, Mali K (2019) Designing fuzzy time series forecasting models: a survey. Int J Approximate Reasoning 111:78–99

    Article  MathSciNet  Google Scholar 

  • Botchkarev, A. (2018). Performance metrics (error measures) in machine learning regression, forecasting and prognostics: Properties and typology. arXiv preprint arXiv:1809.03006.

  • Box G (2013) Box and Jenkins: time series analysis, forecasting and control. In: A Very British Affair, Palgrave Macmillan, London, pp 161–215.

  • Cao L (2003) Support vector machines experts for time series forecasting. Neurocomputing 51:321–339

    Article  Google Scholar 

  • Cao LJ, Tay FEH (2003) Support vector machine with adaptive parameters in financial time series forecasting. IEEE Trans Neural Netw 14(6):1506–1518

    Article  Google Scholar 

  • Ceperic E, Ceperic V, Baric A (2013) A strategy for short-term load forecasting by support vector regression machines. IEEE Trans Power Syst 28(4):4356–4364

    Article  Google Scholar 

  • Chen SM (1996) Forecasting enrollments based on fuzzy time series. Fuzzy Sets Syst 81(3):311–319

    Article  Google Scholar 

  • Chen SM, Hwang JR (2000) Temperature prediction using fuzzy time series. IEEE Trans Syst Man Cybernet Part B (Cybernetics) 30(2):263–275

    Article  Google Scholar 

  • Cheng CH, Wei LY (2010) One step-ahead ANFIS time series model for forecasting electricity loads. Opt Eng 11(2):303–317

    Article  Google Scholar 

  • Colak I, Yesilbudak M, Genc N, Bayindir R (2015) Multi-period Prediction of Solar Radiation Using ARMA and ARIMA Models, In: 2015 IEEE 14th international conference on machine learning and applications (ICMLA), Miami, FL, 2015, pp 1045–1049.

  • Deb C, Zhang F, Yang J, Lee SE, Shah KW (2017) A review on time series forecasting techniques for building energy consumption. Renew Sustain Energy Rev 74:902–924

    Article  Google Scholar 

  • Ding N, Besanger Y. Time series method for short-term load forecasting using smart metering in distribution systems. In: Proceeding of the IEEE Trondheim PowerTech; 2011 pp1-6

  • Erdoğan Z, Namlı E (2019) A living environment prediction model using ensemble machine learning techniques based on quality of life index. J Ambient Intell Human Comput. https://doi.org/10.1007/s12652-019-01432-w

    Article  Google Scholar 

  • Fallah SN, Deo RC, Shojafar M, Conti M, Shamshirband S (2018) Computational intelligence approaches for energy load forecasting in smart energy management grids: state of the art, future challenges, and research directions. Energies 11(3):596

    Article  Google Scholar 

  • Farhath ZA, Arputhamary B, Arockiam L (2016) A survey on ARIMA forecasting using time series model. Int J Comput Sci Mobile Comput 5:104–109

    Google Scholar 

  • Fong S, Li J, Song W et al (2018) Predicting unusual energy consumption events from smart home sensor network by data stream mining with misclassified recall. J Ambient Intell Human Comput 9:1197–1221. https://doi.org/10.1007/s12652-018-0685-7

    Article  Google Scholar 

  • Ghofrani M, Suherli A (2017) Time series and renewable energy forecasting Time Ser Anal Appl 77–92.

  • Guo Y., Li X., Bai G., Ma J. (2012) Time Series Prediction Method Based on LS-SVR with Modified Gaussian RBF. In: Huang T., Zeng Z., Li C., Leung C.S. (eds) Neural Information Processing. ICONIP 2012. Lecture Notes in Computer Science, vol 7664. Springer, Berlin, Heidelberg

  • Hu Z, Bao Y, Xiong T (2013) Electricity load forecasting using support vector regression with memetic algorithms. Sci World J.

  • Huang CF (2012) A hybrid stock selection model using genetic algorithms and support vector regression. Appl Soft Comput 12(2):807–818

    Article  Google Scholar 

  • Huntingford C, Jeffers ES, Bonsall MB, Christensen HM, Lees T, Yang H (2019) Machine learning and artificial intelligence to aid climate change research and preparedness. Environ Res Lett 14(12):124007

    Article  Google Scholar 

  • Lee YS, Tong LI (2012) Forecasting nonlinear time series of energy consumption using a hybrid dynamic model. Appl Energy 94:251–256

    Article  Google Scholar 

  • Lu CJ, Lee TS, Chiu CC (2009) Financial time series forecasting using independent component analysis and support vector regression. Decis Support Syst 47(2):115–125

    Article  Google Scholar 

  • Melin P, Soto J, Castillo O, Soria J (2012) A new approach for time series prediction using ensembles of ANFIS models. Expert Syst Appl 39(3):3494–3506

    Article  Google Scholar 

  • Menaka R, Ramesh R, Dhanagopal R (2020) Behavior based fuzzy security protocol for wireless networks. J Ambient Intell Human Comput. https://doi.org/10.1007/s12652-020-02060-5

    Article  Google Scholar 

  • Muthukumar B, Dhanagopal R, Ramesh R (2019) KYP modeling architecture for cardiovascular diseases and treatments in healthcare institutions. J Ambient Intell Human Comput. https://doi.org/10.1007/s12652-019-01653-z

    Article  Google Scholar 

  • Nepal B, Yamaha M, Yokoe A, Yamaji T (2020) Electricity load forecasting using clustering and ARIMA model for energy management in buildings. Jpn Architectural Rev 3(1):62–76

    Article  Google Scholar 

  • Oancea B, Ciucu ŞC (2014) Time series forecasting using neural networks. arXiv preprint arXiv:1401.1333.

  • Puspita V (2019). Time series forecasting for electricity consumption using kernel principal component analysis (kpca) and support vector machine (SVM). In: Journal of Physics: Conference Series 1196(1): 012073. IOP Publishing.

  • Sapankevych NI, Sankar R (2009) Time series prediction using support vector machines: a survey. IEEE Comput Intell Mag 4(2):24–38

    Article  Google Scholar 

  • Saravanan S, Kannan S, Thangaraj C (2015) Prediction of India's electricity demand using anfis. Ictact J Soft Comput 5(3).

  • Sarıca B, Eğrioğlu E, Aşıkgil B (2018) A new hybrid method for time series forecasting: AR–ANFIS. Neural Comput Appl 29(3):749–760

    Article  Google Scholar 

  • Sfetsos A (2000) A comparison of various forecasting techniques applied to mean hourly wind speed time series. Renew Energy 21(1):23–35

    Article  Google Scholar 

  • Singh SR (2007a) A simple method of forecasting based on fuzzy time series. Appl Math Comput 186(1):330–339

    MathSciNet  MATH  Google Scholar 

  • Singh SR (2007b) A robust method of forecasting based on fuzzy time series. Appl Math Comput 188(1):472–484

    MathSciNet  MATH  Google Scholar 

  • Singh S, Yassine A (2018) Big data mining of energy time series for behavioral analytics and energy consumption forecasting. Energies 11(2):452

    Article  Google Scholar 

  • Sun H, Yan D, Zhao N, Zhou J (2015) Empirical investigation on modeling solar radiation series with ARMA–GARCH models. Energy Convers Manage 92:385–395

    Article  Google Scholar 

  • Tang Z, De Almeida C, Fishwick PA (1991) Time series forecasting using neural networks vs. Box-Jenkins Methodol Simul 57(5):303–310

    Google Scholar 

  • Tealab A (2018) Time series forecasting using artificial neural networks methodologies: a systematic review. Future Comput Inform J 3(2):334–340

    Article  Google Scholar 

  • Tealab A, Hefny H, Badr A (2017) Forecasting of nonlinear time series using ANN. Future Comput Inform J 2(1):39–47

    Article  Google Scholar 

  • Wei LY (2016) A hybrid ANFIS model based on empirical mode decomposition for stock time series forecasting. Appl Soft Comput 42:368–376

    Article  Google Scholar 

  • Zounemat-Kermani M, Teshnehlab M (2008) Using adaptive neuro-fuzzy inference system for hydrological time series prediction. Appl Soft Comput 8(2):928–936

    Article  Google Scholar 

Download references

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Correspondence to K. Balachander.

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This article has been retracted. Please see the retraction notice for more detail: https://doi.org/10.1007/s12652-022-04223-y"

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Balachander, K., Paulraj, D. RETRACTED ARTICLE: ANN and fuzzy based household energy consumption prediction with high accuracy. J Ambient Intell Human Comput 12, 7543–7557 (2021). https://doi.org/10.1007/s12652-020-02455-4

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  • DOI: https://doi.org/10.1007/s12652-020-02455-4

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