At the time of publication, A.R. Pinjari was at the University of South Florida, and C. Bhat was at the University of Texas at Austin.This paper proposes simple and computationally efficient forecasting algorithms for a Kuhn- Tucker (KT) consumer demand model system called the Multiple Discrete-Continuous Extreme Value (MDCEV) model. The algorithms build on simple, yet insightful, analytical explorations with the Kuhn-Tucker conditions of optimality that shed new light on the properties of the model. Although developed for the MDCEV model, the proposed algorithm can be easily modified to be used for other KT demand model systems in the literature with additively separable utility functions. The MDCEV model and the forecasting algor...
Global warming and associated role of energy consumption across various sectors is a well-researched...
This thesis compares different approaches to estimating budgets for Kuhn-Tucker (KT) demand systems,...
Some analyses state that buildings contribute to overall energy consumption by 20–40%, which, in the...
An increased number of intermittent renewables poses a threat to the system balance. As a result, ne...
Abstract: Zero expenditure poses several challenges when estimating demand systems. Zero expenditur...
The U.S. energy mix is highly weighted toward fossil fuels and concerns about fossil fuel reliance h...
An increased number of intermittent renewables poses a threat to the system balance. As a result, ne...
Our electricity use is evolving but the infrastructure providing us with electricity is not evolving...
The overarching aim of this open access book is to present self-contained theory and algorithms for ...
none3noThis paper discusses the application of Hilbertian Auto Regressive models to medium term fore...
International audienceRecent developments in energy metering technologies have allowed electric load...
This study investigates the performance of regression model, Kalman filter adaptation algorithm and ...
textThis Master’s Report outlines graduate research work completed by Akshay Sriprasad, who is super...
International audienceIn this paper, we study the real domestic hot water (DHW) consumptions from si...
Global warming and associated role of energy consumption across various sectors is a well-researched...
This thesis compares different approaches to estimating budgets for Kuhn-Tucker (KT) demand systems,...
Some analyses state that buildings contribute to overall energy consumption by 20–40%, which, in the...
An increased number of intermittent renewables poses a threat to the system balance. As a result, ne...
Abstract: Zero expenditure poses several challenges when estimating demand systems. Zero expenditur...
The U.S. energy mix is highly weighted toward fossil fuels and concerns about fossil fuel reliance h...
An increased number of intermittent renewables poses a threat to the system balance. As a result, ne...
Our electricity use is evolving but the infrastructure providing us with electricity is not evolving...
The overarching aim of this open access book is to present self-contained theory and algorithms for ...
none3noThis paper discusses the application of Hilbertian Auto Regressive models to medium term fore...
International audienceRecent developments in energy metering technologies have allowed electric load...
This study investigates the performance of regression model, Kalman filter adaptation algorithm and ...
textThis Master’s Report outlines graduate research work completed by Akshay Sriprasad, who is super...
International audienceIn this paper, we study the real domestic hot water (DHW) consumptions from si...
Global warming and associated role of energy consumption across various sectors is a well-researched...
This thesis compares different approaches to estimating budgets for Kuhn-Tucker (KT) demand systems,...
Some analyses state that buildings contribute to overall energy consumption by 20–40%, which, in the...