Forte: An Interactive Visual Analytic Tool for Trust-Augmented Net Load Forecasting
November 10, 2023 Β· Declared Dead Β· π IEEE PES Innovative Smart Grid Technologies Conference
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Authors
Kaustav Bhattacharjee, Soumya Kundu, Indrasis Chakraborty, Aritra Dasgupta
arXiv ID
2311.06413
Category
cs.HC: Human-Computer Interaction
Cross-listed
cs.AI,
cs.LG,
eess.SP
Citations
1
Venue
IEEE PES Innovative Smart Grid Technologies Conference
Last Checked
4 months ago
Abstract
Accurate net load forecasting is vital for energy planning, aiding decisions on trade and load distribution. However, assessing the performance of forecasting models across diverse input variables, like temperature and humidity, remains challenging, particularly for eliciting a high degree of trust in the model outcomes. In this context, there is a growing need for data-driven technological interventions to aid scientists in comprehending how models react to both noisy and clean input variables, thus shedding light on complex behaviors and fostering confidence in the outcomes. In this paper, we present Forte, a visual analytics-based application to explore deep probabilistic net load forecasting models across various input variables and understand the error rates for different scenarios. With carefully designed visual interventions, this web-based interface empowers scientists to derive insights about model performance by simulating diverse scenarios, facilitating an informed decision-making process. We discuss observations made using Forte and demonstrate the effectiveness of visualization techniques to provide valuable insights into the correlation between weather inputs and net load forecasts, ultimately advancing grid capabilities by improving trust in forecasting models.
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