Evaluating near-optimal scenarios with EnergyPLAN to support policy makers
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[1] Matteo Giacomo Prina,et al. Municipal energy system modelling – A practical comparison of optimisation and simulation approaches , 2023, Energy.
[2] A. Bagirov,et al. Finding compact and well-separated clusters: Clustering using silhouette coefficients , 2022, Pattern Recognit..
[3] B. Mathiesen,et al. Review and validation of EnergyPLAN , 2022, Renewable and Sustainable Energy Reviews.
[4] Koen van Greevenbroek,et al. Intersecting near-optimal spaces: European power systems with more resilience to weather variability , 2022, Energy Economics.
[5] S. Pfenninger,et al. Diversity of options to eliminate fossil fuels and reach carbon neutrality across the entire European energy system , 2022, Joule.
[6] Poul Alberg Østergaard,et al. A multi-objective optimization approach in defining the decarbonization strategy of a refinery , 2022, Smart Energy.
[7] N. Duić,et al. Optimization of the possible pathways for gradual energy system decarbonization , 2022, Renewable Energy.
[8] Matteo Giacomo Prina,et al. The EPLANoptMAC model to plan the decarbonisation of the maritime transport sector of a small island , 2022, Energy.
[9] Matteo Giacomo Prina,et al. The EPLANopt model for Favignana island's energy transition , 2021 .
[10] G. Andresen,et al. Exploring flexibility of near-optimal solutions to highly renewable energy systems , 2021, 2021 IEEE 48th Photovoltaic Specialists Conference (PVSC).
[11] Henrik Lund,et al. Trends in tools and approaches for modelling the energy transition , 2021, Applied Energy.
[12] M. Rocco,et al. Quantifying the impact of low carbon transition scenarios at regional level through soft-linked energy and economy models: The case of South-Tyrol Province in Italy , 2021 .
[13] Wolfram Sparber,et al. Optimisation method to obtain marginal abatement cost-curve through EnergyPLAN software , 2021 .
[14] Iva Ridjan Skov,et al. EnergyPLAN – Advanced analysis of smart energy systems , 2021 .
[15] Hugo Morais,et al. Polish Energy Transition 2040: Energy Mix Optimization Using Grey Wolf Optimizer , 2021, Energies.
[16] Andrea Menapace,et al. The design of 100 % renewable smart urb an energy systems: The case of Bozen-Bolzano , 2020 .
[17] Wolfram Sparber,et al. Classification and challenges of bottom-up energy system models - A review , 2020, Renewable and Sustainable Energy Reviews.
[18] Emanuela Colombo,et al. Policy Decision Support for Renewables Deployment through Spatially Explicit Practically Optimal Alternatives , 2020 .
[19] Alessandro Prada,et al. Integrated and dynamic energy modelling of a regional system: A cost-optimized approach in the deep decarbonisation of the Province of Trento (Italy) , 2020, Energy.
[20] Michel Noussan,et al. Analysis of smart energy system approach in local alpine regions - A case study in Northern Italy , 2020 .
[21] Matteo Giacomo Prina,et al. Multi-Objective Optimization Model EPLANopt for Energy Transition Analysis and Comparison with Climate-Change Scenarios , 2020 .
[22] A. Toffolo,et al. Towards Optimal Sustainable Energy Systems in Nordic Municipalities , 2020, Energies.
[23] Jachin Gorre,et al. Production costs for synthetic methane in 2030 and 2050 of an optimized Power-to-Gas plant with intermediate hydrogen storage , 2019, Applied Energy.
[24] J. Lilliestam,et al. Home-made or imported: On the possibility for renewable electricity autarky on all scales in Europe , 2019, Energy Strategy Reviews.
[25] Fabian Neumann,et al. The Near-Optimal Feasible Space of a Renewable Power System Model , 2019, Electric Power Systems Research.
[26] Friedrich Krebs,et al. Integrated renewable energy systems for Germany–A model-based exploration of the decision space , 2019, 2019 16th International Conference on the European Energy Market (EEM).
[27] Mário Costa,et al. Increasing the penetration of renewable energy sources in isolated islands through the interconnection of their power systems. The case of Pico and Faial islands, Azores , 2019, Energy.
[28] Poul Alberg Østergaard,et al. Evaluation of electricity storage versus thermal storage as part of two different energy planning approaches for the islands Samsø and Orkney , 2019, Energy.
[29] D. Astiaso Garcia,et al. Synergy between smart energy systems simulation tools for greening small Mediterranean islands , 2019, Renewable Energy.
[30] Adam R. Brandt,et al. Clustering methods to find representative periods for the optimization of energy systems: An initial framework and comparison , 2019, Applied Energy.
[31] David Moser,et al. Transition pathways optimization methodology through EnergyPLAN software for long-term energy planning , 2019, Applied Energy.
[32] A. Bhuvanesh,et al. Aiming towards pollution free future by high penetration of renewable energy sources in electricity generation expansion planning , 2018, Futures.
[33] David Moser,et al. Incorporating combined cycle gas turbine flexibility constraints and additional costs into the EPLANopt model: The Italian case study , 2018, Energy.
[34] Behnam Zakeri,et al. Energy security impacts of a severe drought on the future Finnish energy system. , 2018, Journal of environmental management.
[35] Roberto Vaccaro,et al. Multi-objective optimization algorithm coupled to EnergyPLAN software: The EPLANopt model , 2018, Energy.
[36] B D Satoto,et al. Integration K-Means Clustering Method and Elbow Method For Identification of The Best Customer Profile Cluster , 2018, IOP Conference Series: Materials Science and Engineering.
[37] Luigi Crema,et al. An innovative multi-objective optimization approach for long-term energy planning , 2017 .
[38] André Bardow,et al. SPREAD - Exploring the decision space in energy systems synthesis , 2017, Comput. Chem. Eng..
[39] James Price,et al. Modelling to generate alternatives: A technique to explore uncertainty in energy-environment-economy models , 2017 .
[40] Evelina Trutnevyte,et al. Ensuring diversity of national energy scenarios: Bottom-up energy system model with Modeling to Generate Alternatives , 2017 .
[41] Neven Duić,et al. Impact of high penetration of wind and solar PV generation on the country power system load: The case study of Croatia , 2016 .
[42] Luigi Crema,et al. Designing optimized energy scenarios for an Italian Alpine valley: the case of Giudicarie Esteriori , 2016 .
[43] Neven Duić,et al. Two methods for decreasing the flexibility gap in national energy systems , 2016 .
[44] Markus Wagner,et al. Incorporating domain knowledge into the optimization of energy systems , 2016, Appl. Soft Comput..
[45] Goran Krajačić,et al. Role of District Heating in Systems with a High Share of Renewables: Case Study for the City of Osijek , 2016 .
[46] Brian Vad Mathiesen,et al. Smart Energy Europe: The technical and economic impact of one potential 100% renewable energy scenario for the European Union , 2016 .
[47] Matteo Giacomo Prina,et al. Smart energy systems applied at urban level: the case of the municipality of Bressanone-Brixen , 2016 .
[48] B. Li,et al. Modelling to generate alternatives with an energy system optimization model , 2016, Environ. Model. Softw..
[49] Will McDowall,et al. Energy scenario choices: Insights from a retrospective review of UK energy futures , 2016 .
[50] H. Ossenbrink,et al. DEPLOYMENT PATHWAYS FOR PHOTOVOLTAICS IN THE EU TOWARDS 2020: COMPARING ECONOMIC FACTORS WITH POLICIES AT MUNICIPAL LEVEL , 2015 .
[51] Ilija Batas Bjelić,et al. Simulation-based optimization of sustainable national energy systems , 2015 .
[52] Poul Alberg Østergaard,et al. Reviewing EnergyPLAN simulations and performance indicator applications in EnergyPLAN simulations , 2015 .
[53] Brian Vad Mathiesen,et al. Smart Energy Systems for coherent 100% renewable energy and transport solutions , 2015 .
[54] Paula Varandas Ferreira,et al. Renewable energy scenarios in the Portuguese electricity system , 2014 .
[55] Neven Duić,et al. A 100% renewable energy system in the year 2050: The case of Macedonia , 2012 .
[56] Brian Vad Mathiesen,et al. The technical and economic implications of integrating fluctuating renewable energy using energy storage , 2012 .
[57] Pan Liu,et al. Deriving multiple near‐optimal solutions to deterministic reservoir operation problems , 2011 .
[58] David Connolly,et al. The first step towards a 100% renewable energy-system for Ireland , 2011 .
[59] B. Mathiesen,et al. Modelling the existing Irish energy-system to identify future energy costs and the maximum wind penetration feasible , 2010 .
[60] Brian Vad Mathiesen,et al. Energy system analysis of 100% renewable energy systems-The case of Denmark in years 2030 and 2050 , 2009 .
[61] David W. Coit,et al. Multi-objective optimization using genetic algorithms: A tutorial , 2006, Reliab. Eng. Syst. Saf..
[62] Nikos A. Vlassis,et al. The global k-means clustering algorithm , 2003, Pattern Recognit..
[63] Kalyanmoy Deb,et al. A fast and elitist multiobjective genetic algorithm: NSGA-II , 2002, IEEE Trans. Evol. Comput..
[64] Juan Carlos Osorio-Aravena,et al. Job creation during a climate compliant global energy transition across the power, heat, transport, and desalination sectors by 2050 , 2022 .
[65] P. Laha,et al. Low carbon electricity system for India in 2030 based on multi-objective multi-criteria assessment , 2021 .
[66] Wolfram Sparber,et al. EPLANopt optimization model based on EnergyPLAN applied at regional level: the future competition on excess electricity production from renewables , 2020 .
[67] Henrik Lund,et al. Tool: The EnergyPLAN Energy System Analysis Model , 2010 .