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Data Analysis in the Energy Monitoring System Georgii Mikriukov mikriukov.georgii@yandex.ru 1 Perm National Research Polytechnic University Electrical engineering faculty Perm – Köhten
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2 GridVis – Data acquisition software OpenJEVis – Open source software, basis of energy monitoring system 2 Energy monitoring system
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Functions of DAS DAS – Data Analysis System Primary data processing Data smoothing Statistical parameters calculation Energy consumption prediction Atypical consumption detection 3 3
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DAS functioning algorithm 4 E – raw data E’ – filtered data E* – smoothed data S – statistical data Ep – predicted energy consumption ci – clusters centroids ti – consumption time intervals fi – function of consumption ΔE = E’ – E* 4
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5 Smoothing (moving average) 2N+1 – number of smoothing points (3, 5 or 7) x i – raw data point xs i – smoothed data point Atypical consumption detection (ACD) ΔE < 0 – equipment switching off ΔE > 0 – equipment switching on 5 DAS functions: smoothing & ACD
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6 Clusterization (k-means) V – standard deviation k – number of clusters x j – raw data point S i – cluster c i – centroid Classification 6 DAS functions: clusterization & classification
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7 Statistical parameters maximal consumption average consumption (per day, week, month etc.) leveled consumption value (part of maximal) Working time in different modes Energy consumption prediction 0,75P av < P di <1,25P av – normal consumption P di < 0,75P av – lowered consumption P di > 1,25P av – heightened consumption P di – average consumption per day P av – average consumption for the whole period 7 DAS functions: statistics & prediction
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8 Data analysis 8 Period of time: 20.11.2015 - 20.12.2015 Statistical parameters Maximal consumption (Pmax): 2049,67 W· h Average consumption (Pav): 352,03 W· h Laboratory workload (P > 0,1Pmax): 54,91% Energy consumption, W · h
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9 9 Atypical consumption detection ΔE < –600 – emergency event probability E’ &E*, W · h Δ E, W · h Period of time: 20.11.2015 - 20.12.2015 Filtered (E’) and smoothed (E*) data ΔE = E’ – E* Period of time: 20.11.2015 - 20.12.2015
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3 main consumers: lighting (70%) lighting (30%) laboratory stands 10 Data clusterization 2 3 =8 combinations
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11 Energy consumer classification Class Lighting 70% Lighting 30% Standscici t1t1 t2t2 10004,7096 2001246,13182 3010433,63580 4011704,93390 51001083,13188 61011235,73891 71101484,53989 81111706,14266 c i – cluster centroid (Y coordinate) 11
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12 Energy consumption prediction 1212 4 weeks 3 weeks (more accurate) consumption, W · h Period of time: 20.11.2015 - 20.12.2015
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13 1313 Conclusion Functions and structure of DAS has been considered Statistics of one month ( 20.11.2015- 20.12.2015) has been analyzed Energy consumers were classified according to clusterization data Prediction curve of energy consumption has been calculated
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Thank you for attention 14
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