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Published byClarence Timothy Gardner Modified over 9 years ago
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Non-intrusive Energy Disaggregation using Signal Unmixing Undergraduate: Philip Wolfe Mentors: Alireza Rahimpour, Yang Song Professor: Dr. Hairong Qi Final Presentation- 7/17/14
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Project Description
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Why? ◦Increase consumer knowledge ◦Effect change in consumer behavior ◦Save energy ◦Gather valuable data
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Data Management and Visualization ◦Given ◦REDD- public dataset for disaggregation research ◦Problems ◦UTC format, unevenly spaced intervals (1, 3, 4 seconds, geographic location ◦house data ~1.5e6, memory management, increased calculation time ◦Evaluating results and data inefficient ◦Solutions ◦Convert to serial time, and time zone- Boston (EST) ◦Vectorization, downsample (1/60 Hz)
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Data Management and Visualization ◦Implement GUI to run through indexes and grab desired data ◦Channel mains and device indexing mismatch ◦Day prediction algorithm ◦Variable number channel input handling ◦Visualization GUI to plot each device ◦Checkbox callback channel plotting ◦Timescale axis conversion ◦Color dictionary selection/cycling and Legend ◦Variable number channel input handling
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Approach
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Supervised Training
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Generalization
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Results Figure 1. Aggregate House 6, Day 1.
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Results Figure 2. Individual Device Comparison. House 6, Day 1.
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Results Figure 3. Estimate vs True device consumption
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Conclusion
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Future Work ◦Optimize computational time ◦Multicore processing ◦Find alternative feature extraction method ◦More powerful computer (currently 2.4GHz) ◦Increase accuracy ◦Use higher sampling rate for calculations (downside computation time) ◦Additional data ◦Manually identify key patterns/features (not optimal) ◦Create specialized signal feature extraction for each device
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Questions
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