TY - GEN
T1 - Load forecasting method for Commercial facilities by determination of working time and considering weather information
AU - Fujiwara, Takahiro
AU - Ueda, Yuzuru
N1 - Funding Information:
Part of this study was carried out under the support of JST CREST (issue number JPMJCR15K1) In addition, SII BEMS business disclosure data was used for BEMS data.
Publisher Copyright:
© 2018 IEEE.
PY - 2018/12/6
Y1 - 2018/12/6
N2 - In recent years, spread of BEMS (Building Energy Management System) is expected for the effective use of renewable energy and saving energy. On the other hand, we need energy management because renewable energy is affected by weather. By forecasting load curves of the next day based on the tendency of past loads, we can manage storage battery operation and demand response. However, in case of load forecasting, two factors should be considered. The first is that the working hours differs in each commercial facility. The second is that the maximum load is different by weather condition and the day of week. In this paper, we propose a load forecasting method focused on the working hours and weather information. Firstly, daily load profiles were categorized into the working day and the non-working day for each commercial facility by using threshold calculated from daily load values of 2270 commercial facilities in Kanto area in Japan. Next, the working time of each facility was decided by analyzing past load values until forecasting date, and clustering was performed with load curves in working time. The cluster which forecasting date belonged to was decided by weather information of forecasting date, load values of the previous day and the day of week. Base load of target facility was calculated by using load curves which belong to correspond cluster. By using parameter with the strongest correlation coefficient between maximum load and weather information, we performed linear regression and calculated the maximum load of forecasting day. As a comparison model to evaluate the forecasting accuracy of the proposed method, a simple persistence model was created. The proposed model was superior to a persistence model.
AB - In recent years, spread of BEMS (Building Energy Management System) is expected for the effective use of renewable energy and saving energy. On the other hand, we need energy management because renewable energy is affected by weather. By forecasting load curves of the next day based on the tendency of past loads, we can manage storage battery operation and demand response. However, in case of load forecasting, two factors should be considered. The first is that the working hours differs in each commercial facility. The second is that the maximum load is different by weather condition and the day of week. In this paper, we propose a load forecasting method focused on the working hours and weather information. Firstly, daily load profiles were categorized into the working day and the non-working day for each commercial facility by using threshold calculated from daily load values of 2270 commercial facilities in Kanto area in Japan. Next, the working time of each facility was decided by analyzing past load values until forecasting date, and clustering was performed with load curves in working time. The cluster which forecasting date belonged to was decided by weather information of forecasting date, load values of the previous day and the day of week. Base load of target facility was calculated by using load curves which belong to correspond cluster. By using parameter with the strongest correlation coefficient between maximum load and weather information, we performed linear regression and calculated the maximum load of forecasting day. As a comparison model to evaluate the forecasting accuracy of the proposed method, a simple persistence model was created. The proposed model was superior to a persistence model.
KW - Clustering
KW - Commercial facilities
KW - Load forecasting BEMS
KW - Working time
UR - http://www.scopus.com/inward/record.url?scp=85060612403&partnerID=8YFLogxK
U2 - 10.1109/ICRERA.2018.8567019
DO - 10.1109/ICRERA.2018.8567019
M3 - Conference contribution
AN - SCOPUS:85060612403
T3 - 7th International IEEE Conference on Renewable Energy Research and Applications, ICRERA 2018
SP - 336
EP - 341
BT - 7th International IEEE Conference on Renewable Energy Research and Applications, ICRERA 2018
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 7th International IEEE Conference on Renewable Energy Research and Applications, ICRERA 2018
Y2 - 14 October 2018 through 17 October 2018
ER -