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Dive into the research topics where Manuel Dahmen is active.

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Featured researches published by Manuel Dahmen.


International Journal of Engine Research | 2016

Tailor-made fuels for future engine concepts

Fabian Hoppe; Benedikt Heuser; Matthias Thewes; Florian Kremer; Stefan Pischinger; Manuel Dahmen; Manuel Hechinger; Wolfgang Marquardt

Increasing carbon dioxide accumulation in earth’s atmosphere and the depletion of fossil resources pose huge challenges for our society and, in particular, for all stakeholders in the transportation sector. The Cluster of Excellence ‘Tailor-Made Fuels from Biomass’ at RWTH Aachen University establishes innovative and sustainable processes for the conversion of whole plants into molecularly well-defined fuels exhibiting tailored properties for low-temperature combustion engine processes, enabling high efficiency and low pollutant emissions. The concept of fuel design, that is, considering fuel’s molecular structure to be a design degree of freedom, aims for the simultaneous optimisation of fuel production and combustion systems. In the present contribution, three examples of tailor-made biofuels are presented. For spark ignition engines, both 2-methylfuran and 2-butanone show increased knock resistance compared to RON95 gasoline, thus enabling a higher compression ratio and an efficiency gain of up to 20% at full-load operation. Moreover, both fuels comprise a good mixture formation superior to the one of ethanol, especially under difficult boundary conditions. For compression ignition engines, 1-octanol enables a remarkable reduction in engine-out soot emissions compared to standard diesel fuel due to the high oxygen content and lower reactivity. This advantage is achieved without sacrificing the high indicated efficiency and low NOX emissions.


Computer-aided chemical engineering | 2012

Rigorous Generation and Model-Based Selection of Future Biofuel Candidates

Manuel Hechinger; Manuel Dahmen; Juan J. Victoria Villeda; Wolfgang Marquardt

Abstract Future liquid energy carriers should not only be synthesized sustainably from biomass, but they should also exhibit optimal properties for their application in future combustion engines. Due to the large amount of potential organic molecules, the identification of most promising fuel candidates in the entire molecular search space can only be realized by a model-supported approach. To this end, a novel fuel design framework is presented which combines a rigorous generation of molecular structures with a stepwise reduction to a set of promising candidates based on fuel-relevant properties. Predictive quantitative structure-property relations (QSPR) are employed to assess molecular structures in order to reduce necessary experiments to high potential fuel candidates. Although some of the property prediction models employed are still of limited predictive quality, the feasibility of the proposed approach is successfully shown for gasoline fuels. In particular, a significant reduction of the space of candidate fuel molecules is achieved, thus demonstrating the potential of the novel framework.


International Research of BrenaRo Winterschool | 2015

Towards Model-Based Design of Tailor-Made Fuels from Biomass

Jj Victoria Villeda; Manuel Dahmen; Manuel Hechinger; Anna Voll; Wolfgang Marquardt

In face of the continuous depletion of fossil carbon resources alternative liquid energy carriers have to be identified to guarantee sustainable future mobile propulsion. In this context, the Cluster of Excellence (CoE) “Tailor-Made Fuels from Biomass” (TMFB) at RWTH Aachen University aims at identifying sustainable fossil fuel surrogates from biomass by means of a holistic approach from biomass supply to engine combustion. As the fuel identification process requires the screening of a tremendous number of possible fuel candidates, solely experimental methodologies cannot be applied. To this end, a research team at AVT.PT contributes to a model-based fuel design (MBFD) methodology which is based on an integrated product and process design approach, considering aspects of both fuel combustion and fuel production. It aims at identifying possible fossil fuel surrogates from a database of rigorously generated molecular structures. These fuel surrogates have to comply with a set of pre-defined constraints, which has been elaborated by interdisciplinary collaboration within the CoE. The present contribution illustrates the status quo and future perspectives of model-based fuel design and its integration into the research context of the TMFB cluster.


Energy & Fuels | 2015

A Novel Group Contribution Method for the Prediction of the Derived Cetane Number of Oxygenated Hydrocarbons

Manuel Dahmen; Wolfgang Marquardt


Energy & Fuels | 2016

Model-Based Design of Tailor-Made Biofuels

Manuel Dahmen; Wolfgang Marquardt


SAE International Journal of Fuels and Lubricants | 2012

Towards Model-Based Identification of Biofuels for Compression Ignition Engines

Manuel Dahmen; Manuel Hechinger; Juan J. Victoria Villeda; Wolfgang Marquardt


Energy & Fuels | 2017

Model-Based Formulation of Biofuel Blends by Simultaneous Product and Pathway Design

Manuel Dahmen; Wolfgang Marquardt


Current opinion in chemical engineering | 2012

Towards model-based design of biofuel value chains

Jj Victoria Villeda; Manuel Dahmen; Manuel Hechinger; Anna Voll; Wolfgang Marquardt


Archive | 2017

Model-based design of pure and multicomponent cellulosic biofuels for advanced engine conceptsM

Manuel Dahmen; Wolfgang Marquardt; Stefan Pischinger


XII. Tagung Motorische Verbrennung | 2015

Maßgeschneiderte Kraftstoffe für zukünftige Motorenkonzepte

Fabian Hoppe; Manuel Dahmen; Wolfgang Marquardt; Benedikt Heuser; Stefan Pischinger; Manuel Hechinger; Florian Kremer

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Anna Voll

RWTH Aachen University

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