Evolutionary computation, or evolutionary algorithms, are optimization algorithms, which, when applied to a neural network (as in neuro-evolution) can certainly be classified as a form of reinforcement learning, although it works a bit different than the usual reinforcement learning algorithm.
Generally, in evolutionary algorithms such as genetic algorithms, or evolution strategy, you have a whole population of individuals to be optimized. For each of those individuals, a quality function is used to determine their 'fitness' (as in 'survival of the fittest'), and the best individuals are selected for the next generation. Those 'parents' are then randomly duplicated, modified, mutated, or even recombined with each others -- how exactly this is done is a bit different in each of the different algorithms. Finally, those new mutated and/or recombined parents form the population for the next generation, and the process starts again, until some desired quality is reached, or the quality levels out.
In the case of neuro-evolution, the individuals are neural networks, which are mutated by randomly changing weights (whereas in classical neural networks the weights are updated according to very precise mathematical rules) or even altering their topology, and the quality of the individuals is determined by how well they perform on the training data.
Sorry, no hard scientific reference here, but maybe this still helped clearing things up a bit.