Design and Optimization of Hierarchically Ordered Porous Structures for Solar Thermochemical Fuel Production Using a Voxel-Based Monte Carlo Ray-Tracing Algorithm
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引用次数: 0
Abstract
Porous structures can be favorably used in solar thermochemical reactors for the volumetric absorption of concentrated solar radiation. In contrast to isotropic porous topologies, hierarchically ordered porous topologies with stepwise optical thickness enable more homogeneous radiative absorption within the entire volume, leading to a higher and more uniform temperature distribution and, consequently, a higher solar fuel yield. However, their design and optimization require fast and accurate numerical tools for solving the radiative exchange at the pore level within their complex architectures. Here, we present a novel voxel-based Monte Carlo ray-tracing algorithm that discretizes the pore-level domain into a 3D binary digital representation of solid/void voxels. These are exposed to stochastic rays undergoing reflection, absorption, and re-emission at the ray-solid intersection found by querying the voxel value along the ray path. Temperature distributions are found at radiative equilibrium. The algorithm’s fast execution allows its use in a gradient-free optimization scheme. Three hierarchically ordered topologies with parametrized shapes (square grids, Voronoi cells, and sphere lattices) exposed to 1000 suns radiative flux are optimized for maximum solar fuel production based on the thermodynamics of a ceria-based thermochemical redox cycle for splitting H2O and CO2. The optimized graded-channeled structure with square grids achieves a 4-fold increase in the volume-specific fuel yield compared to the value obtained for an isotropic reticulated porous structure.
期刊介绍:
)ACS Engineering Au is an open access journal that reports significant advances in chemical engineering applied chemistry and energy covering fundamentals processes and products. The journal's broad scope includes experimental theoretical mathematical computational chemical and physical research from academic and industrial settings. Short letters comprehensive articles reviews and perspectives are welcome on topics that include:Fundamental research in such areas as thermodynamics transport phenomena (flow mixing mass & heat transfer) chemical reaction kinetics and engineering catalysis separations interfacial phenomena and materialsProcess design development and intensification (e.g. process technologies for chemicals and materials synthesis and design methods process intensification multiphase reactors scale-up systems analysis process control data correlation schemes modeling machine learning Artificial Intelligence)Product research and development involving chemical and engineering aspects (e.g. catalysts plastics elastomers fibers adhesives coatings paper membranes lubricants ceramics aerosols fluidic devices intensified process equipment)Energy and fuels (e.g. pre-treatment processing and utilization of renewable energy resources; processing and utilization of fuels; properties and structure or molecular composition of both raw fuels and refined products; fuel cells hydrogen batteries; photochemical fuel and energy production; decarbonization; electrification; microwave; cavitation)Measurement techniques computational models and data on thermo-physical thermodynamic and transport properties of materials and phase equilibrium behaviorNew methods models and tools (e.g. real-time data analytics multi-scale models physics informed machine learning models machine learning enhanced physics-based models soft sensors high-performance computing)