带有厌氧消化装置的畜牧场饲养管理优化:一个离散随机规划(DSP)模型

IF 1.4 Q4 GREEN & SUSTAINABLE SCIENCE & TECHNOLOGY
L. Cecchini, D. Pezzolla, M. Chiorri, G. Gigliotti, B. Torquati
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引用次数: 2

摘要

以沼气为基础的能源生产已经成为世界上许多畜牧场的成功战略。然而,由于气候变化对作物种植的影响,原材料生产受到越来越大的不确定性的威胁。本文的目的是在考虑牲畜营养需求和沼气工艺参数的基础上,提出一种沼气混合料优化设计工具。在气候变化的背景下,将三阶段离散随机规划(DSP)模型应用于具有厌氧消化装置的奶牛养殖场。这种状态-偶然方法(DSP模型)考虑饲料作物和高能作物的灌溉需求和产量作为不确定参数。将DSP模型与期望值的等效模型进行了比较,以验证明确包含气候状态所带来的效益。结果显示,原料管理效率显著提高,与基线情景相比,农场成本显著降低(11.75%)。然而,状态条件方法和期望值模型之间的比较显示只有轻微的好处(0.02%)。这证实,当气候变化影响作物产量和灌溉需求时,DSP模型提供更好的对冲解决方案的能力会增强。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feeding Management Optimization in Livestock Farms with Anaerobic Digestion Plant: A Discrete Stochastic Programming (DSP) Model
Abstract Biogas-based energy production has become a successful strategy for many livestock farms around the world. However, raw materials production is threatened by a growing uncertainty due to effects of climate change on crops cultivation. The aim of this paper is to propose a tool for the optimal design of the biogas mixture, considering respectively the nutritional needs of livestock and the parameters of the biogas process. Within a context of climate variability, a three-stage Discrete Stochastic Programming (DSP) model is applied in a dairy cattle farm with anaerobic digestion plant. This state-contingent approach (DSP model) considers, as uncertain parameters, the watering needs and the yields of forage and energetic crops. The DSP model is compared with equivalent models of expected values to verify the benefits derived from the explicit inclusion of climatic states. The results showed a remarkable improvement in the efficiency of feedstock management, reflecting in a significant reduction in farm costs (11.75 %) compared to the baseline scenario. Whereas, the comparison between the state-contingent approach and the expected value model, showed only slight benefits (0.02 %). This confirms that the DSP model’s ability to offer a better hedged solution increases when high climate variability affects crop yields and irrigation needs.
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来源期刊
Environmental and Climate Technologies
Environmental and Climate Technologies GREEN & SUSTAINABLE SCIENCE & TECHNOLOGY-
CiteScore
3.10
自引率
28.60%
发文量
0
审稿时长
16 weeks
期刊介绍: Environmental and Climate Technologies provides a forum for information on innovation, research and development in the areas of environmental science, energy resources and processes, innovative technologies and energy efficiency. Authors are encouraged to submit manuscripts which cover the range from bioeconomy, sustainable technology development, life cycle analysis, eco-design, climate change mitigation, innovative solutions for pollution reduction to resilience, the energy efficiency of buildings, secure and sustainable energy supplies. The Journal ensures international publicity for original research and innovative work. A variety of themes are covered through a multi-disciplinary approach, one which integrates all aspects of environmental science: -Sustainability of technology development- Bioeconomy- Cleaner production, end of pipe production- Zero emission technologies- Eco-design- Life cycle analysis- Eco-efficiency- Environmental impact assessment- Environmental management systems- Resilience- Energy and carbon markets- Greenhouse gas emission reduction and climate technologies- Methodologies for the evaluation of sustainability- Renewable energy resources- Solar, wind, geothermal, hydro energy, biomass sources: algae, wood, straw, biogas, energetic plants and organic waste- Waste management- Quality of outdoor and indoor environment- Environmental monitoring and evaluation- Heat and power generation, including district heating and/or cooling- Energy efficiency.
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