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Showing papers by "Vadim Sokolov published in 2020"


Posted Content
TL;DR: This review aims to bring a spotlight to the growing prevalence of stochastic computer models -- providing a catalogue of statistical methods for practitioners, an introductory view for statisticians, and an emphasis on open questions of relevance to practitioners and statisticians.
Abstract: In modern science, computer models are often used to understand complex phenomena, and a thriving statistical community has grown around analyzing them. This review aims to bring a spotlight to the growing prevalence of stochastic computer models -- providing a catalogue of statistical methods for practitioners, an introductory view for statisticians (whether familiar with deterministic computer models or not), and an emphasis on open questions of relevance to practitioners and statisticians. Gaussian process surrogate models take center stage in this review, and these, along with several extensions needed for stochastic settings, are explained. The basic issues of designing a stochastic computer experiment and calibrating a stochastic computer model are prominent in the discussion. Instructive examples, with data and code, are used to describe the implementation of, and results from, various methods.

26 citations


Posted Content
TL;DR: This review aims to bring a spotlight to the growing prevalence of stochastic computer models --- providing a catalogue of statistical methods for practitioners, an introductory view for statisticians, and an emphasis on open questions of relevance to practitioners and statisticians.
Abstract: In modern science, deterministic computer models are often used to understand complex phenomena, and a thriving statistical community has grown around effectively analysing them. This review aims to bring a spotlight to the growing prevalence of stochastic computer models --- providing a catalogue of statistical methods for practitioners, an introductory view for statisticians (whether familiar with deterministic computer models or not), and an emphasis on open questions of relevance to practitioners and statisticians. Gaussian process surrogate models take center stage in this review, and these, along with several extensions needed for stochastic settings, are explained. The basic issues of designing a stochastic computer experiment and calibrating a stochastic computer model are prominent in the discussion. Instructive examples, with data and code, are used to describe the implementation and results of various methods.

14 citations


Journal ArticleDOI
TL;DR: In this paper, a deep spatio-temporal model and extreme value theory (EVT) is proposed to predict extreme loads observed in energy grids, where the authors use hourly price and demand data from 4719 nodes of the PJM interconnection and construct a deep predictor.
Abstract: Deep Learning is applied to energy markets to predict extreme loads observed in energy grids. Forecasting energy loads and prices is challenging due to sharp peaks and troughs that arise due to supply and demand fluctuations from intraday system constraints. We propose deep spatio-temporal models and extreme value theory (EVT) to capture theses effects and in particular the tail behavior of load spikes. Deep LSTM architectures with ReLU and $\tanh$ activation functions can model trends and temporal dependencies while EVT captures highly volatile load spikes above a pre-specified threshold. To illustrate our methodology, we use hourly price and demand data from 4719 nodes of the PJM interconnection, and we construct a deep predictor. We show that DL-EVT outperforms traditional Fourier time series methods, both in-and out-of-sample, by capturing the observed nonlinearities in prices. Finally, we conclude with directions for future research.

14 citations


Journal ArticleDOI
TL;DR: An algorithm to minimize fleet fuel consumption while satisfying customers travel time constraints is developed and can reduce total fuel consumption by 7 percent while maintaining a high level of mobility service.
Abstract: Shared Mobility-on-Demand using automated vehicles can reduce energy consumption and cost for future mobility. However, its full potential in energy saving has not been fully explored. An algorithm to minimize fleet fuel consumption while satisfying customers' travel time constraints is developed in this article. Numerical simulations with realistic travel demand and route choice are performed, showing that if fuel consumption is not considered, the Mobility-on-demand (MOD) service can increase fleet fuel consumption due to increased empty vehicle mileage. With fuel consumption as part of the cost function, we can reduce total fuel consumption by 7% while maintaining a high level of mobility service.

7 citations


Journal ArticleDOI
TL;DR: Computational aspects of deep learning, which uses network architectures consisting of hierarchical layers of latent variables to construct predictors for high‐dimensional input–output models, are reviewed.
Abstract: In this article we review computational aspects of Deep Learning (DL). Deep learning uses network architectures consisting of hierarchical layers of latent variables to construct predictors for high-dimensional input-output models. Training a deep learning architecture is computationally intensive, and efficient linear algebra libraries is the key for training and inference. Stochastic gradient descent (SGD) optimization and batch sampling are used to learn from massive data sets.

4 citations