130,974 research outputs found
The Merge of Two Worlds: Integrating Artificial Neural Networks into Agent-Based Electricity Market Simulation
Machine learning and agent-based modeling are two popular tools in energy research. In this article, we propose an innovative methodology that combines these methods. For this purpose, we develop an electricity price forecasting technique using artificial neural networks and integrate the novel approach into the established agent-based electricity market simulation model PowerACE. In a case study covering ten interconnected European countries and a time horizon from 2020 until 2050 at hourly resolution, we benchmark the new forecasting approach against a simpler linear regression model as well as a naive forecast. Contrary to most of the related literature, we also evaluate the statistical significance of the superiority of one approach over another by conducting Diebold-Mariano hypothesis tests. Our major results can be summarized as follows. Firstly, in contrast to real-world electricity price forecasts, we find the naive approach to perform very poorly when deployed model-endogenously. Secondly, although the linear regression performs reasonably well, it is outperformed by the neural network approach. Thirdly, the use of an additional classifier for outlier handling substantially improves the forecasting accuracy, particularly for the linear regression approach. Finally, the choice of the model-endogenous forecasting method has a clear impact on simulated electricity prices. This latter finding is particularly crucial since these prices are a major results of electricity market models
Quantifying the Impact of Unpredictable Generation on Market Coupling
Modeling Market Coupling using an agent-based approach, we compare two organizations: centralized versus decentralized. To perform this comparison we analytically study the impact of wind farm concentration and the uncertainty resulting from the increasing penetration of renewables on the total cost of procurement, market welfare and the ratio of renewable generation to conventional supplies. We prove that the existence and uniqueness of equilibrium depend on the number of interacting demand markets. In a decentralized organization, forecast errors heavily impact the behavior of the electrical system. Simulations show that suppliers have incentives to certify the forecast uncertainty of other markets. We analytically derive the uncertainty price that might be charged by a risk certificator depending on the required confidence level
Cooperation in manure-based biogas production networks: An agent-based modeling approach
Biogas production from manure has been proposed as a partial solution to energy and environmental concerns. However, manure markets face distortions caused by considerable unbalance between supply and demand and environmental regulations imposed for soil and water protection. Such market distortions influence the cooperation between animal farmers, biogas producers and arable land owners causing fluctuations in manure prices paid (or incurred) by animal farmers. This paper adopts an agent-based modeling approach to investigate the interactions between manure suppliers, i.e., animal farmers, and biogas producers in an industrial symbiosis case example consisting of 19 municipalities in the Overijssel region (eastern Netherlands). To find the manure price for successful cooperation schemes, we measure the impact of manure discharge cost, dimension and dispersion of animal farms, incentives provided by the government for bioenergy production, and the investment costs of biogas plants for different scales on the economic returns for both actor types and favorable market conditions. Findings show that manure exchange prices may vary between −3.33 €/t manure (i.e., animal farmer pays to biogas producer) and 7.03 €/t manure (i.e., biogas producer pays to animal farmer) and thanks to cooperation, actors can create a total economic value added between 3.73 €/t manure and 39.37 €/t manure. Hence, there are cases in which animal farmers can profitably be paid, but the presence of a supply surplus not met by demand provides an advantage to arable land owners and biogas producers in the price contracting phase in the current situation in the Netherlands
Consentaneous agent-based and stochastic model of the financial markets
We are looking for the agent-based treatment of the financial markets
considering necessity to build bridges between microscopic, agent based, and
macroscopic, phenomenological modeling. The acknowledgment that agent-based
modeling framework, which may provide qualitative and quantitative
understanding of the financial markets, is very ambiguous emphasizes the
exceptional value of well defined analytically tractable agent systems. Herding
as one of the behavior peculiarities considered in the behavioral finance is
the main property of the agent interactions we deal with in this contribution.
Looking for the consentaneous agent-based and macroscopic approach we combine
two origins of the noise: exogenous one, related to the information flow, and
endogenous one, arising form the complex stochastic dynamics of agents. As a
result we propose a three state agent-based herding model of the financial
markets. From this agent-based model we derive a set of stochastic differential
equations, which describes underlying macroscopic dynamics of agent population
and log price in the financial markets. The obtained solution is then subjected
to the exogenous noise, which shapes instantaneous return fluctuations. We test
both Gaussian and q-Gaussian noise as a source of the short term fluctuations.
The resulting model of the return in the financial markets with the same set of
parameters reproduces empirical probability and spectral densities of absolute
return observed in New York, Warsaw and NASDAQ OMX Vilnius Stock Exchanges. Our
result confirms the prevalent idea in behavioral finance that herding
interactions may be dominant over agent rationality and contribute towards
bubble formation.Comment: 17 pages, 6 figures, Gontis V, Kononovicius A (2014) Consentaneous
Agent-Based and Stochastic Model of the Financial Markets. PLoS ONE 9(7):
e102201. doi: 10.1371/journal.pone.010220
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