The best way to explain an Artificial Neural Network (ANN) is to provide the biological process that it attempts to simulate - a neural network. The best example of one is the human brain. So how does the brain work (highly simplified for CS)?
The functional unit (for our purposes) of the brain is the neuron. It is a potential accumulator and "disperser". What that means is that after a certain amount of electric potential (think filling a balloon with air) has been reached, it "fires" (balloon pops). It fires electric signals down any connections it has.
How are neurons connected? Synapses. These synapses can have various weights (in real life due to stronger/weaker synapses from thicker/thinner connections). These weights allow a certain amount of a fired signal to pass through.
You thus have a large collection of neurons connected by synapses - the base representation for your ANN. Note that the input/output structures described by the others are an artifact of the type of problem to which ANNs are applied. Theoretically, any neuron can accept input as well. It serves little purpose in computational tasks however.
So now on to ANNs.
NEURONS: Neurons in an ANN are very similar to their biological counterpart. They are modeled either as
step functions (that signal out "1" after a certain combined input signal, or "0" at all other times), or slightly more sophisticated firing sequences (
sigmoid, etc) that produce a continuous output, though scaled similarly to a step. This is closer to the biological reality.
SYNAPSES: These are extremely simple in ANNs - just weights describing the connections between Neurons. Used simply to weight the neurons that are connected to the current one, but still play a crucial role: synapses are the cause of the network's output. To clarify, the training of an ANN with a set structure and neuron activation function is simply the modification of the synapse weights. That is it. No other change is made in going from a a "dumb" net to one that produces accurate results.
There is no "correct" structure for a neural network. The structures are either
a) chosen by hand, or
b) allowed to grow as a result of learning algorithms (a la Cascade-Correlation Networks).
Assuming the hand-picked structure, these are actually chosen through careful analysis of the problem and expected solution. Too few "hidden" neurons/layers, and you structure is not complex enough to approximate a complex function. Too many, and your training time rapidly grows unwieldy. For this reason, the selection of inputs ("features") and the structure of a neural net are, IMO, 99% of the problem. The training and usage of ANNs is trivial in comparison.
To now address your GA concern, it is one of many, many efforts used to train the network by modifying the synapse weights. Why? because in the end, a neural network's output is simply an extremely high-order surface in N dimensions. ANY surface optimization technique can be use to solve the weights, and GA are one such technique. The simple backpropagation method is alikened to a dimension-reduced gradient-based optimization technique.