# Weighed point clusters in a 2D plane

I am in the process of learning the principles behind pervasive positioning, and I am currently experimenting with the things I have learned.

I have a list of nearby access points (APs). For each access point, I have a signal strength (as an integer) from my current location (which is unknown) to the access point. Furthermore, I also know the exact positions of my access points.

From this, I then compare this data with a previous map of fingerprint signals to determine my position within a building. This works just fine by averaging the position of the nearby access points to determine my position, but I want this average to be weighed.

For instance, I want to be able to control how much the average weighs towards the following factors:

• The signal strength from my position to the access point.
• The distance of each access point to the others.

I tried visualizing my problem here graphically. I hope you understand.

The red dot is where I want the system to think I am (based on distances or signal strength from me to each access point), and the green dots are the access points.

As you can see, the red dot is positioned closer to a cluster of access points.

How can I achieve this result, or something similar? I've looked at the Least Squares problem, but I can't seem to figure out how to integrate it into something useful.

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