tl;dr you are going to have to modify your feature set, i.e. scaling your date/time to match the magnitude of your geo data.

DBSCAN's input is simply a vector, and the algorithm itself doesn't know that one dimension (time) is orders of magnitudes bigger or smaller than another (distance). Thus, when calculating the density of data points, the difference in scaling will screw it up.

Now I suppose you can modify the algorithm itself to treat different dimensions differently. This can be done by changing the definition of "distance" between two points, i.e. supplying your own distance function, instead of using the default Euclidean distance.

IMHO, though, the easier thing to do is to scale one of your dimension to match another. just multiply your time values by a fixed, linear factor so they are on the same order of magnitude as the geo values, and you should be good to go.

more generally, this is part of the features selection process, which is arguably the most important part of solving any machine learning algorithm. choose the right features, and transform them correctly, and you'd be more than halfway to a solution.