# PHP MySql and geolocation

I am writing a site that basically looks for places within a 25 mile radius of a lat and long using php and mysql.

I am wondering how something like this would work?

I would pass a lat and long to the scrip and have it pull out only locations that are within 25 miles of the lat and long from my Database of locations.

What is the best way to do this?

EDIT: I found this code for calculating the distance between 2 points.

``````    function distance(\$lat1, \$lon1, \$lat2, \$lon2, \$unit) {

\$theta = \$lon1 - \$lon2;
\$dist = acos(\$dist);
\$miles = \$dist * 60 * 1.1515;
\$unit = strtoupper(\$unit);

if (\$unit == "K") {
return (\$miles * 1.609344);
} else if (\$unit == "N") {
return (\$miles * 0.8684);
} else {
return \$miles;
}
}
``````

Is ther a way to do this calc in the MYSQL look up so I can only return if miles =< 25?

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From where is it pulling the other locations? Do you every intended location's lat/long stored in array or database? –  shamittomar Aug 31 '10 at 5:00
I edited the question. I will have certain locations in my database and will see if any of them are within 25 miles. If not, none are returned. –  shaneburgess Aug 31 '10 at 5:02
some more info here: stackoverflow.com/questions/20865747/geolocation-mysql-query –  user1892803 Dec 5 '14 at 16:45

Calculating the distance using that function there is pretty computationally expensive, because it involves a whole bunch of transcendental functions. This is going to be problematic when you have a large number of rows to filter on.

Here's an alternative, an approximation that's way less computationally expensive:

Approximate distance in miles:

``````sqrt(x * x + y * y)

where x = 69.1 * (lat2 - lat1)
and y = 53.0 * (lon2 - lon1)
``````

You can improve the accuracy of this approximate distance calculation by adding the cosine math function:

Improved approximate distance in miles:

``````sqrt(x * x + y * y)

where x = 69.1 * (lat2 - lat1)
and y = 69.1 * (lon2 - lon1) * cos(lat1/57.3)
``````

I ran a bunch of tests with randomly generated datasets.

• The difference in accuracy for the 3 algorithms is minimal, especially at short distances
• The slowest algorithm is, of course, the one with the trig functions (the one on your question). It is 4x slower than the other two.

Definitely not worth it. Just go with an approximation.
Code is here: http://pastebin.org/424186

To use this on MySQL, create a stored procedure that takes coordinate arguments and returns the distance, then you can do something like:

``````SELECT columns
FROM table
WHERE DISTANCE(col_x, col_y, target_x, target_y) < 25
``````
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You may want to take a look at this solution - a somewhat brilliat workaround.

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You can do it easily in two steps:

• Find all locations within 25 miles in each direction of the point. This will look like: `WHERE lat BETWEEN \$lat1 AND \$lat2 AND lng BETWEEN \$lng1 AND \$lng2`

• Then loop through each result and check to see if it really is within 25 miles using your code. (i.e., Filter out those locations that are in the corners of the square.)

For the first part, here's some code I have laying around (don't remember the source):

``````\$lat_range = \$radius / ((6076 / 5280) * 60);
\$lng_range = \$radius / (((cos((\$city['lat'] * 3.141592653589 / 180)) * 6076) / 5280) * 60);
``````

Basically just use `(\$lat - \$lat_range, \$lat + \$lat_range)` and `(\$lng - \$lng_range, \$lng + \$lng_range)` Radius is in miles.

Obviously you can clean up the math a bit.

Edit: I forgot to mention that you would need to tweak it a bit if you need to support locations near the equator, international date line, etc. Obviously for North America, it would be fine as-is.

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This of course has the disadvantage of needing two filtering steps, because it returns unnecessary rows. –  NullUserException Aug 31 '10 at 5:39
Yes, but it avoids performing calculations against the entire database. With a small radius and a large dataset, that can be important. –  Matthew Aug 31 '10 at 5:45