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Long-Term Load Forecasting of Southern Governorates of Jordan Distribution Electric System 被引量:1
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作者 Aouda A. Arfoa 《Energy and Power Engineering》 2015年第5期242-253,共12页
Load forecasting is vitally important for electric industry in the deregulated economy. This paper aims to face the power crisis and to achieve energy security in Jordan. Our participation is localized in the southern... Load forecasting is vitally important for electric industry in the deregulated economy. This paper aims to face the power crisis and to achieve energy security in Jordan. Our participation is localized in the southern parts of Jordan including, Ma’an, Karak and Aqaba. The available statistical data about the load of southern part of Jordan are supplied by electricity Distribution Company. Mathematical and statistical methods attempted to forecast future demand by determining trends of past results and use the trends to extrapolate the curve demand in the future. 展开更多
关键词 long-term load forecasting PEAK load Max DEMAND and Least SQUARES
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Medium-Term Electric Load Forecasting Using Multivariable Linear and Non-Linear Regression 被引量:2
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作者 Nazih Abu-Shikhah Fawwaz Elkarmi Osama M. Aloquili 《Smart Grid and Renewable Energy》 2011年第2期126-135,共10页
Medium-term forecasting is an important category of electric load forecasting that covers a time span of up to one year ahead. It suits outage and maintenance planning, as well as load switching operation. We propose ... Medium-term forecasting is an important category of electric load forecasting that covers a time span of up to one year ahead. It suits outage and maintenance planning, as well as load switching operation. We propose a new methodol-ogy that uses hourly daily loads to predict the next year hourly loads, and hence predict the peak loads expected to be reached in the next coming year. The technique is based on implementing multivariable regression on previous year's hourly loads. Three regression models are investigated in this research: the linear, the polynomial, and the exponential power. The proposed models are applied to real loads of the Jordanian power system. Results obtained using the pro-posed methods showed that their performance is close and they outperform results obtained using the widely used ex-ponential regression technique. Moreover, peak load prediction has about 90% accuracy using the proposed method-ology. The methods are generic and simple and can be implemented to hourly loads of any power system. No extra in-formation other than the hourly loads is required. 展开更多
关键词 medium-term load forecasting Electrical PEAK load MULTIVARIABLE Regression And TIME SERIES
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Long Term Load Forecasting and Recommendations for China Based on Support Vector Regression
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作者 Shijie Ye Guangfu Zhu Zhi Xiao 《Energy and Power Engineering》 2012年第5期380-385,共6页
Long-term load forecasting (LTLF) is a challenging task because of the complex relationships between load and factors affecting load. However, it is crucial for the economic growth of fast developing countries like Ch... Long-term load forecasting (LTLF) is a challenging task because of the complex relationships between load and factors affecting load. However, it is crucial for the economic growth of fast developing countries like China as the growth rate of gross domestic product (GDP) is expected to be 7.5%, according to China’s 11th Five-Year Plan (2006-2010). In this paper, LTLF with an economic factor, GDP, is implemented. A support vector regression (SVR) is applied as the training algorithm to obtain the nonlinear relationship between load and the economic factor GDP to improve the accuracy of forecasting. 展开更多
关键词 long term load forecasting Support VECTOR Regression China
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Medium Term Load Forecasting for Jordan Electric Power System Using Particle Swarm Optimization Algorithm Based on Least Square Regression Methods
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作者 Mohammed Hattab Mohammed Ma’itah +2 位作者 Tha’er Sweidan Mohammed Rifai Mohammad Momani 《Journal of Power and Energy Engineering》 2017年第2期75-96,共22页
This paper presents a technique for Medium Term Load Forecasting (MTLF) using Particle Swarm Optimization (PSO) algorithm based on Least Squares Regression Methods to forecast the electric loads of the Jordanian grid ... This paper presents a technique for Medium Term Load Forecasting (MTLF) using Particle Swarm Optimization (PSO) algorithm based on Least Squares Regression Methods to forecast the electric loads of the Jordanian grid for year of 2015. Linear, quadratic and exponential forecast models have been examined to perform this study and compared with the Auto Regressive (AR) model. MTLF models were influenced by the weather which should be considered when predicting the future peak load demand in terms of months and weeks. The main contribution for this paper is the conduction of MTLF study for Jordan on weekly and monthly basis using real data obtained from National Electric Power Company NEPCO. This study is aimed to develop practical models and algorithm techniques for MTLF to be used by the operators of Jordan power grid. The results are compared with the actual peak load data to attain minimum percentage error. The value of the forecasted weekly and monthly peak loads obtained from these models is examined using Least Square Error (LSE). Actual reported data from NEPCO are used to analyze the performance of the proposed approach and the results are reported and compared with the results obtained from PSO algorithm and AR model. 展开更多
关键词 medium term load forecasting Particle SWARM Optimization Least SQUARE Regression Methods
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Long-Term Electrical Load Forecasting in Rwanda Based on Support Vector Machine Enhanced with Q-SVM Optimization Kernel Function
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作者 Eustache Uwimana Yatong Zhou Minghui Zhang 《Journal of Power and Energy Engineering》 2023年第8期32-54,共23页
In recent years, Rwanda’s rapid economic development has created the “Rwanda Africa Wonder”, but it has also led to a substantial increase in energy consumption with the ambitious goal of reaching universal access ... In recent years, Rwanda’s rapid economic development has created the “Rwanda Africa Wonder”, but it has also led to a substantial increase in energy consumption with the ambitious goal of reaching universal access by 2024. Meanwhile, on the basis of the rapid and dynamic connection of new households, there is uncertainty about generating, importing, and exporting energy whichever imposes a significant barrier. Long-Term Load Forecasting (LTLF) will be a key to the country’s utility plan to examine the dynamic electrical load demand growth patterns and facilitate long-term planning for better and more accurate power system master plan expansion. However, a Support Vector Machine (SVM) for long-term electric load forecasting is presented in this paper for accurate load mix planning. Considering that an individual forecasting model usually cannot work properly for LTLF, a hybrid Q-SVM will be introduced to improve forecasting accuracy. Finally, effectively assess model performance and efficiency, error metrics, and model benchmark parameters there assessed. The case study demonstrates that the new strategy is quite useful to improve LTLF accuracy. The historical electric load data of Rwanda Energy Group (REG), a national utility company from 1998 to 2020 was used to test the forecast model. The simulation results demonstrate the proposed algorithm enhanced better forecasting accuracy. 展开更多
关键词 SVM Quadratic SVM long-term Electrical load forecasting Residual load Demand Series Historical Electric load
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Deep Learning Network for Energy Storage Scheduling in Power Market Environment Short-Term Load Forecasting Model
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作者 Yunlei Zhang RuifengCao +3 位作者 Danhuang Dong Sha Peng RuoyunDu Xiaomin Xu 《Energy Engineering》 EI 2022年第5期1829-1841,共13页
In the electricity market,fluctuations in real-time prices are unstable,and changes in short-term load are determined by many factors.By studying the timing of charging and discharging,as well as the economic benefits... In the electricity market,fluctuations in real-time prices are unstable,and changes in short-term load are determined by many factors.By studying the timing of charging and discharging,as well as the economic benefits of energy storage in the process of participating in the power market,this paper takes energy storage scheduling as merely one factor affecting short-term power load,which affects short-term load time series along with time-of-use price,holidays,and temperature.A deep learning network is used to predict the short-term load,a convolutional neural network(CNN)is used to extract the features,and a long short-term memory(LSTM)network is used to learn the temporal characteristics of the load value,which can effectively improve prediction accuracy.Taking the load data of a certain region as an example,the CNN-LSTM prediction model is compared with the single LSTM prediction model.The experimental results show that the CNN-LSTM deep learning network with the participation of energy storage in dispatching can have high prediction accuracy for short-term power load forecasting. 展开更多
关键词 Energy storage scheduling short-term load forecasting deep learning network convolutional neural network CNN long and short term memory network LTSM
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Optimal Scheme with Load Forecasting for Demand Side Management (DSM) in Residential Areas
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作者 Mohamed AboGaleela Magdy El-Marsafawy Mohamed El-Sobki 《Energy and Power Engineering》 2013年第4期889-896,共8页
Utilities around the world have been considering Demand Side Management (DSM) in their strategic planning. The costs of constructing and operating a new capacity generation unit are increasing everyday as well as Tran... Utilities around the world have been considering Demand Side Management (DSM) in their strategic planning. The costs of constructing and operating a new capacity generation unit are increasing everyday as well as Transmission and distribution and land issues for new generation plants, which force the utilities to search for another alternatives without any additional constraints on customers comfort level or quality of delivered product. De can be defined as the selection, planning, and implementation of measures intended to have an influence on the demand or customer-side of the electric meter, either caused directly or stimulated indirectly by the utility. DSM programs are peak clipping, Valley filling, Load shifting, Load building, energy conservation and flexible load shape. The main Target of this paper is to show the relation between DSM and Load Forecasting. Moreover, it highlights on the effect of applying DSM on Forecasted demands and how this affects the planning strategies for utility companies. This target will be clearly illustrated through applying the developed algorithm in this paper on an existing residential compound in Cairo-Egypt. 展开更多
关键词 Component DEMAND Side Management(DSM) load factor(L.F.) Short term load Forecatsing(STLF) long term load forecasting(LTLF) Artificial Neural Network(ANN)
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Analysis of Medium-and Long-term Electricity Trading in Hydroelectric Power Plant
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作者 DONG Zhen 《外文科技期刊数据库(文摘版)工程技术》 2021年第4期451-456,共6页
Chongqing has been trying out medium and long-term electricity transaction to estimate electricity, this paper from the grid load change, water situation estimation, absorption situation, grid structure analysis of va... Chongqing has been trying out medium and long-term electricity transaction to estimate electricity, this paper from the grid load change, water situation estimation, absorption situation, grid structure analysis of various aspects of analysis, finally get the hydropower plant medium and long-term electricity transaction important decision-making opinions. 展开更多
关键词 medium and long term consumption of electricity water regime forecast
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Long-term system load forecasting based on data-driven linear clustering method 被引量:19
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作者 Yiyan LI Dong HAN Zheng YAN 《Journal of Modern Power Systems and Clean Energy》 SCIE EI 2018年第2期306-316,共11页
In this paper, a data-driven linear clustering(DLC) method is proposed to solve the long-term system load forecasting problem caused by load fluctuation in some developed cities. A large substation load dataset with a... In this paper, a data-driven linear clustering(DLC) method is proposed to solve the long-term system load forecasting problem caused by load fluctuation in some developed cities. A large substation load dataset with annual interval is utilized and firstly preprocessed by the proposed linear clustering method to prepare for modelling.Then optimal autoregressive integrated moving average(ARIMA) models are constructed for the sum series of each obtained cluster to forecast their respective future load. Finally, the system load forecasting result is obtained by summing up all the ARIMA forecasts. From error analysis and application results, it is both theoretically and practically proved that the proposed DLC method can reduce random forecasting errors while guaranteeing modelling accuracy, so that a more stable and precise system load forecasting result can be obtained. 展开更多
关键词 long-term system load forecasting Datadriven LINEAR clustering AUTOREGRESSIVE integrated moving average(ARIMA) Error analysis
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基于改进BILSTM/BIGRU的多特征短期负荷预测 被引量:2
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作者 王昊 王树东 唐伟强 《计算机与数字工程》 2025年第3期755-759,864,共6页
针对传统神经网络在多输入特征下预测时间较长且精度欠佳的问题,论文提出了一种基于深度双向策略改进的长短期记忆神经网络与门控循环单元神经网络相结合的短期负荷预测模型。该模型采用自适应噪声完整集成经验模态算法将负荷数据进行分... 针对传统神经网络在多输入特征下预测时间较长且精度欠佳的问题,论文提出了一种基于深度双向策略改进的长短期记忆神经网络与门控循环单元神经网络相结合的短期负荷预测模型。该模型采用自适应噪声完整集成经验模态算法将负荷数据进行分解,降低负荷数据复杂度;利用互信息主成分分析法提取原始多维输入变量,降低主成分因子;然后通过改进鲸鱼优化算法对构建模型进行寻参优化。以中国某地区的负荷数据作为算例,将论文所构建模型与其它模型进行了对比分析,预测结果表明,论文所构建的模型能够缩短预测的时间,提高负荷预测的精度。 展开更多
关键词 负荷预测 深度双向策略 改进鲸鱼优化算法 长短期记忆神经网络 门控循坏单元神经网络
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中国陆区未来1—3年地震趋势与长期危险区发震紧迫程度预测研究
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作者 邵志刚 刘琦 +15 位作者 潘正洋 王武星 武艳强 周斌 孟令媛 孙小龙 冯蔚 王芃 魏文薪 刘晓霞 尹晓菲 王振宇 戴娅琼 解滔 闫伟 刁洋洋 《地震》 北大核心 2025年第1期214-261,共48页
中期地震预测作为中国“长-中-短-临”渐进式地震预报体系的中间环节,在动态跟踪长期趋势预测与地震重点危险区判识结果、衔接年度预测与短临预报方面发挥着关键作用。该环节为短临预测提供科学背景依据,其核心任务体系由地震大形势跟... 中期地震预测作为中国“长-中-短-临”渐进式地震预报体系的中间环节,在动态跟踪长期趋势预测与地震重点危险区判识结果、衔接年度预测与短临预报方面发挥着关键作用。该环节为短临预测提供科学背景依据,其核心任务体系由地震大形势跟踪专家组负责实施,主要包括两大核心任务:第一,开展1—3年尺度地震活动趋势研判和主体活动区判定,包含大陆地区地震活跃程度升降趋势、最高活动水平(最大震级与7级地震频度)预测,以及基于全国地震趋势与构造动力环境分析的主体活动区域综合判定;第二,实施10年尺度地震重点危险区在中期时段发震紧迫性动态评估。技术体系层面,趋势预测主要依托强震期幕活动规律、地震活动异常特征、区域形变场演化程度及断层应力状态等四类指标,涉及的数据处理、分析和计算均为定量方法,但整体而言这些指标主要是基于震例的经验预测方法;发震紧迫程度判定尽量沿用长期预测思路,动态跟踪断层运动状态、断层应力状态和震源异常等,整体上是基于震源物理模型的概率预测和基于震例指标的经验预测的结合。本研究系统介绍了中国陆区未来1—3年地震趋势与长期危险区紧迫程度的跟踪思路和技术体系,对每类预测方法简要从基本原理、技术方法和中期异常特征等方面进行介绍,最后结合中期预测实践和相关研究进展,提出了大陆型强震孕育发生过程及前兆成因机制等研究需求,并对中国地震数值预测和地震预报业务信息化进行了展望。在业务方面,希望通过技术体系、跟踪思路和预测方法的阶段总结进一步明确中期预测的发展方向;在科学上,围绕中期预测的业务发展,明确基本科技需求:一个场源结合的科学思路、两个基础性框架科学理论、三个地震动力学科学问题,期望为地震预测基础研究和预报业务发展起到抛砖引玉的作用。 展开更多
关键词 中期地震预测 长期地震重点危险区 1—3年地震趋势 长期危险区紧迫程度
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多种黏结介质下CFRP筋材复合式锚具长期性能试验
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作者 李宇 梅葵花 +2 位作者 李雪 王远志 孙胜江 《中国公路学报》 北大核心 2025年第1期213-223,共11页
纤维增强聚合物由于具有高强、轻质、耐腐蚀和低蠕变等优点,具有替代大跨径缆索承重桥中传统钢质缆索的潜力。为了实现碳纤维增强聚合物(Carbon Fiber Reinforced Polymer, CFRP)筋材锚具在斜拉桥拉索、拱桥吊杆等土木工程构件中长期可... 纤维增强聚合物由于具有高强、轻质、耐腐蚀和低蠕变等优点,具有替代大跨径缆索承重桥中传统钢质缆索的潜力。为了实现碳纤维增强聚合物(Carbon Fiber Reinforced Polymer, CFRP)筋材锚具在斜拉桥拉索、拱桥吊杆等土木工程构件中长期可靠的应用,对分别采用纯环氧树脂、掺加玄武岩纤维丝或滑石粉的环氧树脂作为黏结介质的8个复合式锚具试件进行了至少1 000 h的长期性能试验,揭示了不同掺和料对锚具长期性能的影响,并对长期性能试验后的锚具残留锚固性能进行检验。结果表明:8个试件经过长期性能试验后筋材和黏结介质黏结状态完好,说明该新型复合式锚具具有优良的长期性能;在环氧树脂中掺加0.5%玄武岩纤维丝或滑石粉后的单筋试件相对于采用纯环氧树脂的试件筋材滑移分别减小了37%和29.5%,残留荷载分别提高了11%和6.8%,而当掺量为1%时其则几乎无变化,说明在环氧树脂中掺加适量的玄武岩纤维丝或滑石粉均可有效地提高复合式锚具的长期性能;此外,由于掺加滑石粉的试件只能降低环氧树脂黏结介质的蠕变变形,并不能提高黏结介质对CFRP筋材的黏结性能,因此提升效果不如掺加玄武岩纤维丝的明显。经过长期性能试验后,8个试件在短期静载试验中的破坏模式均为筋材断裂,残留锚固效率均大于95%,表明该新型复合式锚具在经过1 000 h的长期性能试验后仍能有效地锚固筋材,可长期安全地工作,具有应用于实际工程的潜力。 展开更多
关键词 桥梁工程 长期性能 长期持荷试验 复合式锚具 CFRP筋材 黏结介质 掺和料
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基于人体舒适度指数的高峰季节空调负荷预测方法
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作者 韩平平 丁静雅 +3 位作者 吴红斌 仇茹嘉 徐斌 吴家毓 《太阳能学报》 北大核心 2025年第3期141-150,共10页
提出一种基于综合人体舒适度指数的高峰季节空调负荷预测方法,从而获得更加准确的空调负荷数据参与电网调控。首先,考虑到不同季节的负荷增量影响和数据样本范围,分别利用最大负荷比较法和基准负荷比较法得到更具可信度的空调负荷数据;... 提出一种基于综合人体舒适度指数的高峰季节空调负荷预测方法,从而获得更加准确的空调负荷数据参与电网调控。首先,考虑到不同季节的负荷增量影响和数据样本范围,分别利用最大负荷比较法和基准负荷比较法得到更具可信度的空调负荷数据;其次,计算包含温度、相对湿度和风速指标的主客观综合权重,构建考虑时空分布特性的人体舒适度模型,并验证其与空调负荷之间的关联性;最后,基于综合人体舒适度指数提取建模样本数据,并将其作为神经网络的输入,建立空调负荷预测模型。理论分析和算例验证表明所提方法在不同情景下可有效提高空调负荷预测精度。 展开更多
关键词 分布式发电 空调 负荷预测 人体舒适度指数 双向长短期记忆网络
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基于模态分解和误差修正的短期电力负荷预测
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作者 鄢化彪 李东丽 +2 位作者 黄绿娥 张航菘 姚龙龙 《电子测量技术》 北大核心 2025年第5期92-101,共10页
针对电力负荷非线性、高波动性和强随机性等特性导致无法充分提取时序特征引起预测误差较大的问题,提出了基于改进的自适应白噪声完全集合经验模态分解和误差修正的双向时间卷积网络-双向长短期记忆网络短期电力负荷预测方法。先由最大... 针对电力负荷非线性、高波动性和强随机性等特性导致无法充分提取时序特征引起预测误差较大的问题,提出了基于改进的自适应白噪声完全集合经验模态分解和误差修正的双向时间卷积网络-双向长短期记忆网络短期电力负荷预测方法。先由最大信息系数筛选出与负荷高度相关的特征集,以削弱特征冗余;通过改进的自适应白噪声完全集合经验模态分解将高波动性的负荷分解为频率各异的本征模态分量和残差,以降低非平稳性;引入样本熵将复杂度相近的分量重构成新子序列,以降低计算量;然后,结合并行双向时间卷积网络提取不同尺度的特征,利用双向长短期记忆网络对负荷序列初步预测,使用麻雀优化算法对神经网络超参数调优;最后,误差序列通过误差修正模块对初始预测值进行修正。经实验验证,与其他预测模型相比,RMSE最多降低51.42%,最少降低34.26%,验证了模型的准确性和有效性。 展开更多
关键词 电力负荷 短期预测 自适应经验模态分解 样本熵 双向时间卷积网络 双向长短期记忆 麻雀搜索算法
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基于奇异谱分析和双向LSTM的多元负荷同时预测
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作者 刘永福 张天颖 +1 位作者 霍殿阳 张立梅 《科学技术与工程》 北大核心 2025年第19期8099-8107,共9页
开展多元负荷的准确预测对提高新能源消纳、实现节能减排、确保电网安全可靠运行具有重要意义。为了提高多元负荷同时预测的精度,构建了奇异谱分析与双向长短期记忆网络相结合的多元负荷同时预测模型。首先,利用皮尔逊相关系数进行耦合... 开展多元负荷的准确预测对提高新能源消纳、实现节能减排、确保电网安全可靠运行具有重要意义。为了提高多元负荷同时预测的精度,构建了奇异谱分析与双向长短期记忆网络相结合的多元负荷同时预测模型。首先,利用皮尔逊相关系数进行耦合特征提取,以识别多元负荷数据中的内在关联和依赖关系;其次,使用奇异谱分析进行特征提取,以便更全面地捕捉多元负荷数据的动态特性,降低预测难度。最后,针对所提模型引入多任务学习,利用多个负荷预测任务之间的共享信息,相互辅助进行预测,提升预测精度。实验分别通过多区域多元负荷和柔性负荷及风光发电数据进行仿真分析,结果表明,在多区域中电、热、冷负荷预测平均绝对百分比误差平均提高0.41%,均方根误差平均提高0.02 MW。 展开更多
关键词 多元负荷同时预测 奇异谱分析 双向长短期记忆网络 多任务学习模型 皮尔逊相关系数
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基于复合因子构造的KAN-BiLSTM电力负荷预测方法
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作者 陈景文 黄羽倩 +4 位作者 刘耀先 陈宋宋 钱晓瑞 周颖 詹祥澎 《中国电力》 北大核心 2025年第12期178-189,198,共13页
针对未充分考虑气象因子交互作用、模型非线性表达能力存在局限性等问题,基于复合因子构造提出一种结合科尔莫戈洛夫-阿诺德网络(Kolmogorov-Arnold network,KAN)与双向长短期记忆(bidirectional long short-term memory,BiLSTM)网络的... 针对未充分考虑气象因子交互作用、模型非线性表达能力存在局限性等问题,基于复合因子构造提出一种结合科尔莫戈洛夫-阿诺德网络(Kolmogorov-Arnold network,KAN)与双向长短期记忆(bidirectional long short-term memory,BiLSTM)网络的电力负荷预测方法。首先,通过高斯混合模型(Gaussian mixture model,GMM)将有相似特征的用电负荷曲线归类。其次,提出复合因子构造策略,通过皮尔逊相关性分析量化气象因子与负荷的线性关联度,筛选关键气象变量并构造交互项,充分挖掘气象因素间潜在交互作用,结合最大信息系数(maximal information coefficient,MIC)进一步提取非线性依赖特征。最后,针对传统BiLSTM模型全连接层对高维非线性特征学习能力受限的问题,引入KAN替代全连接层,利用其非线性映射能力,构建KAN-BiLSTM混合预测模型。基于某地区实际数据进行算例分析,实验结果表明,在春秋日、夏季常温日、夏季高温日、冬季日4类不同负荷模式下所提方法均具有较高的预测准确率和普适性,可为多气象耦合场景下的电力负荷精准预测提供一种可行的解决方案。 展开更多
关键词 负荷预测 复合因子构造 双向长短期记忆网络 Kolmogorov-Arnold网络 非线性表征
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基于CEEMD的分特征组合超短期负荷预测模型
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作者 商立群 贾丹铭 +1 位作者 安迪 王俊昆 《广西师范大学学报(自然科学版)》 北大核心 2025年第5期41-51,共11页
电力负荷预测对电力调度和系统安全至关重要。针对超短期负荷预测,本文提出一种结合补充集合经验模态分解(complementary ensemble empirical mode decomposition,CEEMD)与机器学习、智能优化算法的组合预测模型。首先通过CEEMD对原始... 电力负荷预测对电力调度和系统安全至关重要。针对超短期负荷预测,本文提出一种结合补充集合经验模态分解(complementary ensemble empirical mode decomposition,CEEMD)与机器学习、智能优化算法的组合预测模型。首先通过CEEMD对原始数据进行分解,再利用排列熵(permutation entropy,PE)阈值进行分量分流。高频信号采用双向长短期记忆网络(bidirectional long short-term memory,BiLSTM)预测,低频信号则通过混合核极限学习机(hybrid kernel extreme learning machine,HKELM)并结合雪消融优化算法(snow ablation optimizer,SAO)进行优化预测。最终,各分量预测结果叠加得到综合预测值。通过实例分析,模型的均方根误差、平均绝对误差和平均绝对百分比误差分别为61.61 kW、43.91 kW和0.38%,显著优于传统模型。实验结果表明,该模型充分发掘数据内在特征、结合各方法预测优势,在超短期负荷预测中具有较高的精度。 展开更多
关键词 短期电力负荷预测 CEEMD 排列熵 双向长短期记忆网络 极限学习机 智能优化算法
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基于SDAE-EEMD降噪分解与改进Informer-BiLSTM模型的电力短期负荷预测方法
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作者 蔡子龙 李嘉棋 +3 位作者 沈赋 王健 徐潇源 杨宇林 《电网技术》 北大核心 2025年第12期5009-5018,I0010-I0015,共16页
当前短期负荷预测模型在电价与负荷动态融合机制、负荷数据降噪与时序特征提取环节仍存在不足,制约了预测精度的提升。该文提出了一种集成电价及气象多维特征的短期电力负荷预测框架。首先,结合堆叠降噪自编码器(stacked denoising auto... 当前短期负荷预测模型在电价与负荷动态融合机制、负荷数据降噪与时序特征提取环节仍存在不足,制约了预测精度的提升。该文提出了一种集成电价及气象多维特征的短期电力负荷预测框架。首先,结合堆叠降噪自编码器(stacked denoising autoencoders,SDAE)和集合经验模态分解(ensemble empirical mode decomposition,EEMD)构建混合降噪分解模块,有效抑制负荷序列中的噪声干扰和模态混叠问题。EEMD将去噪后负荷序列分解为固有模态函数(intrinsic mode functions,IMFs)分量。其次,基于最大信息系数(maximum information coefficient,MIC)分析,将电价和气象特征分别融入高、低频IMFs分量中,实现差异化的特征动态融合。在此基础上,提出分频预测策略。针对高频分量,引入全局时间戳编码与稀疏注意力机制的改进Informer模型,以捕捉短时剧烈波动特征;对低频分量,采用Bi LSTM网络捕捉长期趋势与周期性。最后,基于澳大利亚国家电力市场公开数据集的实证结果表明,在平均绝对百分比误差和均方误差两个指标上均显著优于未引入电价特征或未采用分频策略的对比模型。通过高质量数据预处理、关键特征动态融合与针对性分频结构建模的协同优化,有效提升了短期负荷预测的精度与稳定性,可为电力市场动态定价机制下的负荷预测提供高效可靠的技术支撑。 展开更多
关键词 短期负荷预测 电价 SDAE EEMD 改进Informer BiLSTM 分频预测
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基于RA-LSTM模型的山西省中长期电力负荷预测
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作者 周绍妮 吴优 +1 位作者 窦雨菡 郑奕扬 《气象与环境科学》 2025年第1期78-87,共10页
准确的中长期电力负荷预测对电力系统的规划和运行至关重要。由于传统方法在非线性特性处理和时序依赖建模方面存在局限,难以全面捕捉负荷数据的复杂特征,因而提出了一种基于残差网络和注意力机制的RA-LSTM模型。模型通过引入残差连接,... 准确的中长期电力负荷预测对电力系统的规划和运行至关重要。由于传统方法在非线性特性处理和时序依赖建模方面存在局限,难以全面捕捉负荷数据的复杂特征,因而提出了一种基于残差网络和注意力机制的RA-LSTM模型。模型通过引入残差连接,缓解梯度消失问题,增强了模型对长时序依赖特征的捕捉能力;同时融合注意力机制,增强了对关键时间点和特征的敏感性。以山西省为案例,构建了融合时间特征和气象要素的数据集,对RA-LSTM模型进行了全面评估。实验结果表明,RA-LSTM模型在均方根误差(RMSE)、平均绝对误差(MAE)、平均绝对百分比误差(MAPE)及决定系数(R^(2))等指标上均显著优于基准BP模型和传统LSTM模型。RA-LSTM模型的MAPE、MAE较BP模型的分别降低了41.8%、40.9%,显著提升了模型的预测精度和稳定性。显著性检验结果进一步验证了RA-LSTM模型预测结果的科学性,为中长期电力负荷预测提供了一种高效且稳健的解决方案,并为未来探索多特征融合和模型优化提供了理论和实践基础。 展开更多
关键词 中长期电力负荷 预测 RA-LSTM模型 残差网络 注意力机制 深度学习
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基于相似日和IWOA优化BiLSTM的短期电力负荷预测
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作者 朱莉 李豪 +2 位作者 汪小豪 姜成龙 曹明海 《中南民族大学学报(自然科学版)》 2025年第4期507-514,共8页
为了有效提升短期负荷预测的精度,提出了一种基于相似日和IWOA优化BiLSTM的短期电力负荷预测模型.该模型首先利用Pearson相关性分析选取负荷的主要影响因素,并利用综合匹配相似度选取相似日,为模型提供更有效的输入;然后研究了一种基于... 为了有效提升短期负荷预测的精度,提出了一种基于相似日和IWOA优化BiLSTM的短期电力负荷预测模型.该模型首先利用Pearson相关性分析选取负荷的主要影响因素,并利用综合匹配相似度选取相似日,为模型提供更有效的输入;然后研究了一种基于非线性控制参数策略和种群变异策略的IWOA算法,对BiLSTM网络的参数进行寻优,构建IWOA-BiLSTM预测模型;最后以澳大利亚真实负荷数据集作为实际算例进行验证,结果表明:该预测模型相较于其他模型获得了更高的预测精度,证明了该方法的有效性. 展开更多
关键词 短期负荷预测 改进鲸鱼优化算法 相似日 双向长短期记忆网络 超参数寻优
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