Multifractional Brownian motion and quantum-behaved particle swarm optimization for short term power load forecasting: An integrated approach

被引:55
作者
Song, Wanqing [1 ]
Cattani, Carlo [2 ]
Chi, Chi-Hung [3 ]
机构
[1] Shanghai Univ Engn Sci, Sch Elect & Elect Engn, Shanghai 201620, Peoples R China
[2] Tuscia Univ, Dept Econ Engn Soc & Business Org, I-01100 Viterbo, Italy
[3] CSIRO, Data61, 15 Coll Rd, Hobart, Tas 7005, Australia
关键词
Fractional brownian motion; Long-range dependence; Particle swarm optimization; Power load forecasting; Quantum-behaved particle swarm optimization; MODELING AUTOCORRELATION FUNCTIONS; SUPPORT VECTOR REGRESSION; LONG-RANGE DEPENDENCE; HURST EXPONENT; OPTIMAL APPROXIMATION; PREDICTION; ALGORITHM;
D O I
10.1016/j.energy.2019.116847
中图分类号
O414.1 [热力学];
学科分类号
摘要
Power load fluctuation is generally agreed to be a non-stationary stochastic process. The Fractional Brownian Motion (FBM) model is proposed to forecast a non-stationary time series with high accuracy. Computation of the Hurst exponent (H) for the power load data series using the Rescaled Range Analysis (RCS) in this study. This method is used to verify the Long-Range Dependent (LRD) characteristics of non-stationary power load data. For the real power load, however, H exponent takes on the self-similarity characteristics in a certain finite range of intervals, the global self-similarity is very rare to exist. The H exponent of the self-similarity usually has more than one value. We generalize multifractional H(t) to replace constant H. To improve the forecasting accuracy, the H(t) is optimized by the Quantum-Behaved Particle Swarm Optimization (QPSO). Once the optimal H(t) is obtained, then the optimal and parameters in the multi-Fractional Brownian Motion (mFBM) model can be deduced to forecast next power load data series with a higher accuracy. (C) 2020 Elsevier Ltd. All rights reserved.
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页数:8
相关论文
共 49 条
[1]   On Hurst exponent estimation under heavy-tailed distributions [J].
Barunik, Jozef ;
Kristoufek, Ladislav .
PHYSICA A-STATISTICAL MECHANICS AND ITS APPLICATIONS, 2010, 389 (18) :3844-3855
[2]   Particle swarm optimization for the design of low-dispersion fiber Bragg gratings [J].
Baskar, S ;
Zheng, RT ;
Alphones, A ;
Ngo, NQ ;
Suganthan, PN .
IEEE PHOTONICS TECHNOLOGY LETTERS, 2005, 17 (03) :615-617
[3]   Comparison of Satellite Reflectance Algorithms for Estimating Phycocyanin Values and Cyanobacterial Total Biovolume in a Temperate Reservoir Using Coincident Hyperspectral Aircraft Imagery and Dense Coincident Surface Observations [J].
Beck, Richard ;
Xu, Min ;
Zhan, Shengan ;
Liu, Hongxing ;
Johansen, Richard A. ;
Tong, Susanna ;
Yang, Bo ;
Shu, Song ;
Wu, Qiusheng ;
Wang, Shujie ;
Berling, Kevin ;
Murray, Andrew ;
Emery, Erich ;
Reif, Molly ;
Harwood, Joseph ;
Young, Jade ;
Martin, Mark ;
Stillings, Garrett ;
Stumpf, Richard ;
Su, Haibin ;
Ye, Zhaoxia ;
Huang, Yan .
REMOTE SENSING, 2017, 9 (06)
[4]   Identification of nonlinear Hammerstein system using mixed integer-real coded particle swarm optimization: application to the electric daily peak-load forecasting [J].
Boubaker, Sahbi .
NONLINEAR DYNAMICS, 2017, 90 (02) :797-814
[5]   The particle swarm - Explosion, stability, and convergence in a multidimensional complex space [J].
Clerc, M ;
Kennedy, J .
IEEE TRANSACTIONS ON EVOLUTIONARY COMPUTATION, 2002, 6 (01) :58-73
[6]  
Delorme M, 2016, PHYS REV, V94, P24
[7]   Maximum of a Fractional Brownian Motion: Analytic Results from Perturbation Theory [J].
Delorme, Mathieu ;
Wiese, Kay Joerg .
PHYSICAL REVIEW LETTERS, 2015, 115 (21)
[8]   A hybrid method based on wavelet, ANN and ARIMA model for short- term load forecasting [J].
Fard, Abdollah Kavousi ;
Akbari-Zadeh, Mohammad-Reza .
JOURNAL OF EXPERIMENTAL & THEORETICAL ARTIFICIAL INTELLIGENCE, 2014, 26 (02) :167-182
[9]   Multi-Scale Permutation Entropy Based on Improved LMD and HMM for Rolling Bearing Diagnosis [J].
Gao, Yangde ;
Villecco, Francesco ;
Li, Ming ;
Song, Wanqing .
ENTROPY, 2017, 19 (04)
[10]   A Monte Carlo and PSO based virtual sample generation method for enhancing the energy prediction and energy optimization on small data problem: An empirical study of petrochemical industries [J].
Gong, Hong-Fei ;
Chen, Zhong-Sheng ;
Zhu, Qun-Xiong ;
He, Yan-Lin .
APPLIED ENERGY, 2017, 197 :405-415