2019 AIChE Annual Meeting
(372p) Optimal Design and Operation of Biomass Waste Gasification for Energy and Biochar Production
Authors
In this work, a downdraft gasifier, which has been proved to be a standout choice for medium size throughputs [1], is considered for biomass waste gasification approach. To facilitate the optimization of greenhouse-gas mitigation and economic feasibility of gasification approach, first-principles fix-bed gasification has been developed in MATLAB to simulate the syngas and biochar production. The model employs a three-region assumption based on different fluid velocity profiles, which divided the gasifier into a natural convection region, a forced convection region, and a mixed convection region. The predicted outputs have been validated by experimental data, with a general deviation of less than 10% [2].
Based on the high-fidelity gasification model, a stochastic radial basis function-based global optimization algorithm [3, 4] will be employed to optimize the process operating conditions. In this presentation, a number of decision variables will be considered for optimization, such as biomass feed, moisture content and the equivalence ratio. A multi-objective framework will be considered to maximize energy output and minimize greenhouse gas emission, tackling the trade-off between economic and environmental aspects.
References
- You, S., Wang, W., Dai, Y., Tong, Y. W., & Wang, C. H. (2016). Comparison of the co-gasification of sewage sludge and food wastes and cost-benefit analysis of gasification-and incineration-based waste treatment schemes. Bioresource technology, 218, 595-605.
- Yao, Z., You, S., Ge, T., & Wang, C. H. (2018). Biomass gasification for syngas and biochar co-production: Energy application and economic evaluation. Applied Energy, 209, 43-55.
- Regis, R. G., & Shoemaker, C. A. (2007). A stochastic radial basis function method for the global optimization of expensive functions. INFORMS Journal on Computing, 19(4), 497-509.
- Akhtar, T., & Shoemaker, C. A. (2016). Multi objective optimization of computationally expensive multi-modal functions with RBF surrogates and multi-rule selection. Journal of Global Optimization, 64(1), 17-32.