This paper describes an experiment to investigate how the localisation performance of a neural network for Sound Source Localisation named `SampleDOA\_SR' would be affected by reducing the sample rate of the audio training data. Reducing the sample rate has several benefits; most notably a reduction in training time. The goal is to determine an appropriate sample rate which balances both localisation accuracy and training time. This information will be used to inform the future training of a neural network for Sound Source Localisation which will be used in a stereo upmixing pipeline. The results of this experiment indicate reducing the sample rate from 48kHz down to below 4kHz results in a significant decrease in localisation accuracy. However, above 4kHz, the decrease in localisation accuracy is minimal whilst training time is reduced significantly. This suggests providing the particular application for the model does not require the highest level of accuracy, a minimal reduction in localisation performance may be acceptable to obtain a large reduction in training time which would also reduce the environmental impact of the model training. A sample rate of 16kHz is suggested as a suitable balance between accuracy and training time.