School of Engineering and Advanced Technology, Massey University , Private Bag 11 222, Palmerston North 4442, New Zealand.
INRIA BIOCORE , BP 93, 06902 Sophia Antipolis Cedex, France.
Environ Sci Technol. 2016 Apr 5;50(7):4102-10. doi: 10.1021/acs.est.5b05412. Epub 2016 Mar 16.
The ability to dynamically control algal raceway ponds to maximize biomass productivity and reduce environmental impacts (e.g., land and water use) with consideration of local constraints (e.g., water availability and climatic conditions) is an important consideration in algal biotechnology. This paper presents a novel optimization strategy that seeks to maximize growth (i.e., optimize land use), minimize respiration losses, and minimize water demand through regular adjustment of pond depth and hydraulic retention time (HRT) in response to seasonal changes. To evaluate the efficiency of this strategy, algal productivity and water demand were simulated in five different climatic regions. In comparison to the standard approach (constant and location-independent depth and HRT), dynamic control of depth and HRT was shown to increase productivity by 0.6-9.9% while decreasing water demand by 10-61% depending upon the location considered (corresponding to a decrease in the water footprint of 19-62%). Interestingly, when the fact that the water demand was limited to twice the local annual rainfall was added as a constraint, higher net productivities were predicted in temperate and tropical climates (15.7 and 16.7 g m(-2) day(-1), respectively) than in Mediterranean and subtropical climates (13.0 and 9.7 g m(-2) day(-1), respectively), while algal cultivation was not economically feasible in arid climates. Using dynamic control for a full-scale operation by adjusting for local climatic conditions and water constraints can notably affect algal productivity. It is clear that future assessments of algal cultivation feasibility should implement locally optimized dynamic process control.
动态控制藻类跑道池塘以最大限度地提高生物量生产力并减少环境影响(例如,土地和水的利用),同时考虑到当地的限制因素(例如,水的可用性和气候条件),这是藻类生物技术的一个重要考虑因素。本文提出了一种新的优化策略,旨在通过定期调整池塘深度和水力停留时间(HRT)来响应季节性变化,最大限度地提高生长(即优化土地利用),最小化呼吸损失,并最小化水需求。为了评估该策略的效率,在五个不同的气候区域模拟了藻类生产力和水需求。与标准方法(恒定且与位置无关的深度和 HRT)相比,深度和 HRT 的动态控制可将生产力提高 0.6-9.9%,同时将水需求减少 10-61%,具体取决于所考虑的位置(相应的水足迹减少 19-62%)。有趣的是,当将水需求限制在当地年降雨量的两倍以内作为约束条件添加时,在温带和热带气候下(分别为 15.7 和 16.7 g m(-2) day(-1))预测的净生产力高于地中海和亚热带气候下的预测(分别为 13.0 和 9.7 g m(-2) day(-1)),而在干旱气候下藻类养殖在经济上不可行。通过根据当地气候条件和水限制进行全面运营的动态控制,可以显著影响藻类的生产力。显然,未来对藻类养殖可行性的评估应实施本地优化的动态过程控制。