Carey David L, Crow Justin, Ong Kok-Leong, Blanch Peter, Morris Meg E, Dascombe Ben J, Crossley Kay M
Int J Sports Physiol Perform. 2018 Feb 1;13(2):194-199. doi: 10.1123/ijspp.2016-0695. Epub 2018 Feb 14.
To investigate whether preseason training plans for Australian football can be computer generated using current training-load guidelines to optimize injury-risk reduction and performance improvement.
A constrained optimization problem was defined for daily total and sprint distance, using the preseason schedule of an elite Australian football team as a template. Maximizing total training volume and maximizing Banister-model-projected performance were both considered optimization objectives. Cumulative workload and acute:chronic workload-ratio constraints were placed on training programs to reflect current guidelines on relative and absolute training loads for injury-risk reduction. Optimization software was then used to generate preseason training plans.
The optimization framework was able to generate training plans that satisfied relative and absolute workload constraints. Increasing the off-season chronic training loads enabled the optimization algorithm to prescribe higher amounts of "safe" training and attain higher projected performance levels. Simulations showed that using a Banister-model objective led to plans that included a taper in training load prior to competition to minimize fatigue and maximize projected performance. In contrast, when the objective was to maximize total training volume, more frequent training was prescribed to accumulate as much load as possible.
Feasible training plans that maximize projected performance and satisfy injury-risk constraints can be automatically generated by an optimization problem for Australian football. The optimization methods allow for individualized training-plan design and the ability to adapt to changing training objectives and different training-load metrics.
研究能否利用当前的训练负荷指南,通过计算机生成澳大利亚式足球的季前训练计划,以优化降低受伤风险和提高运动表现。
以一支精英澳大利亚式足球队的季前赛程为模板,针对每日总训练量和冲刺距离定义了一个约束优化问题。将最大化总训练量和最大化班尼斯特模型预测的运动表现均视为优化目标。对训练计划施加累积工作量和急性:慢性工作量比率约束,以反映当前关于降低受伤风险的相对和绝对训练负荷的指南。然后使用优化软件生成季前训练计划。
该优化框架能够生成满足相对和绝对工作量约束的训练计划。增加休赛期的慢性训练负荷能使优化算法规定更多“安全”的训练量,并达到更高的预测运动表现水平。模拟结果表明,使用班尼斯特模型目标会产生在比赛前训练负荷逐渐减少的计划,以尽量减少疲劳并最大化预测运动表现。相比之下,当目标是最大化总训练量时,则规定更频繁的训练以积累尽可能多的负荷。
通过一个针对澳大利亚式足球的优化问题,可以自动生成能最大化预测运动表现并满足受伤风险约束的可行训练计划。这些优化方法允许进行个性化训练计划设计,并能够适应不断变化的训练目标和不同的训练负荷指标。