# Introduction
This research examines the way that the brain's motor system carries out movement tasks by looking at the trajectory of human subjects' arms during (mostly) reaching and pistol-aiming movements. The authors' observation was that even though subjects were able to reliably to carry out these movements, the way in which they did so (i.e the trajectory of their arm) varied considerably between trials.
Previous models for motor coordination suggest that the brain strictly separates motor planning and motor execution. That is to say, the brain decides in advance, how to move its limbs in order to carry out a task and then follows that sequence to complete a movement. However this model doesn't make sense given that the motor system is still able to complete movements even in the presence of unforeseen perturbations.
Instead, the authors propose a theory for motor coordination based on stochastic optimal feedback control. They suggest that motor coordination is implemented as a feedback control loop where both the motor signals and the sensory feedback are subject to noise and transmission delay. To complete a movement, the motor system comes up with an optimal feedback control law which iteratively calculates the motor outputs throughout a given task based on the instantaneous state of the system. The system defines this 'optimal control law' as being that which maximises task performance while minimising the total effort expended in carrying out the movement.
# Method
The authors ran simulations for simple movement tasks. They used optimal control laws to drive the simulations and then compared the results with measurements taken from human subjects doing the same movement tasks. It was found that the simulations showed the same variability in their joint trajectories along task-irrelevant dimensions as the human subjects in the practical experiments.
# Results
This research concluded that the control algorithm implemented by the motor system can be explained by the principle of minimal intervention defined in the optimal control framework. The principle of minimal intervention dictates that control effort should only expended on state dimensions that are relevant for completing the task at hand. This minimises the total control effort and avoids the possibility of degrading task performance by attempting to correct irrelevant errors with noisy control signals.