mongodb的地理位置索引

本文介绍了MongoDB中空间索引的应用场景与实现方法,包括如何创建2D索引、查询附近的地点、设置查询限制条件及使用复合索引。此外,还提供了多种查询示例,如基于圆形和矩形范围的查询。
  mongoDB支持二维空间索引,使用空间索引,mongoDB支持一种特殊查询,如某地图网站上可以查找离你最近的咖啡厅,银行等信息。这个使用mongoDB的空间索引结合特殊的查询方法很容易实现。
前提条件:
建立空间索引的key可以使用array或内嵌文档存储,但是前两个elements必须存储固定的一对空间位置数值。如
{ loc : [ 50 , 30 ] }
{ loc : { x : 50 , y : 30 } }
{ loc : { foo : 50 , y : 30 } }
{ loc : { lat : 40.739037, long: 73.992964 } }
# 使用范例1:
> db.mapinfo.drop()                                         
true
> db.mapinfo.insert({"category" : "coffee","name" : "digoal coffee bar","loc" : [70,80]})
> db.mapinfo.insert({"category" : "tea","name" : "digoal tea bar","loc" : [70,80]})      
> db.mapinfo.insert({"category" : "tea","name" : "hangzhou tea bar","loc" : [71,81]})
> db.mapinfo.insert({"category" : "coffee","name" : "hangzhou coffee bar","loc" : [71,81]})
# 未创建2d索引时,不可以使用$near进行查询
> db.mapinfo.find({loc : {$near : [50,50]}})
error: {
        "$err" : "can't find special index: 2d for: { loc: { $near: [ 50.0, 50.0 ] } }",
        "code" : 13038
}
# 在loc上面创建2d索引
> db.mapinfo.ensureIndex({"loc" : "2d"},{"background" : true})
> db.mapinfo.getIndexes()                                     
[
        {
                "name" : "_id_",
                "ns" : "test.mapinfo",
                "key" : {
                        "_id" : 1
                }
        },
        {
                "_id" : ObjectId("4d242e1f3238ba30f9ca05ad"),
                "ns" : "test.mapinfo",
                "key" : {
                        "loc" : "2d"
                },
                "name" : "loc_",
                "background" : true
        }
]
# 查询测试,返回结果按照从最近到最远的顺序排序输出.
> db.mapinfo.find({loc : {$near : [72,82]},"category" : "coffee"}).explain()
{
        "cursor" : "GeoSearchCursor",
        "nscanned" : 2,
        "nscannedObjects" : 2,
        "n" : 2,
        "millis" : 0,
        "indexBounds" : {

        }
}
> db.mapinfo.find({loc : {$near : [72,82]},"category" : "coffee"})          
{ "_id" : ObjectId("4d242dce3238ba30f9ca05ac"), "category" : "coffee", "name" : "hangzhou coffee bar", "loc" : [ 71, 81 ] }
{ "_id" : ObjectId("4d242d8b3238ba30f9ca05a9"), "category" : "coffee", "name" : "digoal coffee bar", "loc" : [ 70, 80 ] }
# 换一个经纬度后结果相反.
> db.mapinfo.find({loc : {$near : [69,69]},"category" : "coffee"})
{ "_id" : ObjectId("4d242d8b3238ba30f9ca05a9"), "category" : "coffee", "name" : "digoal coffee bar", "loc" : [ 70, 80 ] }
{ "_id" : ObjectId("4d242dce3238ba30f9ca05ac"), "category" : "coffee", "name" : "hangzhou coffee bar", "loc" : [ 71, 81 ] }
# 2d默认取值范围[-179,-179]到[180,180] 包含这两个点,超出范围将报错
> db.mapinfo.insert({"category" : "bank","name" : "china people bank","loc" : [181,181]})  
point not in range
> db.mapinfo.insert({"category" : "bank","name" : "china people bank","loc" : [-179,-180]})
in > 0
# 如果已经存在超过范围的值,建2D索引将报错
> db.mapinfo.insert({"category" : "bank","name" : "china people bank","loc" : [-180,-180]})
> db.mapinfo.ensureIndex({"loc" : "2d"})                                                   
in > 0
# 在建2d索引的时候可以指定取值范围
# 如,以上包含了[-180,-180]这个点之后,建2d索引将报错,使用以下解决.或者把这条记录先处理掉.
# 在限制条件下,min不包含,max包含,从下面建索引的语句中可以看出.
> db.mapinfo.ensureIndex({"loc" : "2d"},{min:-181,max:180})
> 成功
# 注意官方文档上说you can only have 1 geo2d index per collection right now,不过测试可以建多个,如下
> db.mapinfo.drop()                                        
true
> db.mapinfo.insert({"category" : "bank","name" : "china people bank","loc" : [71,81],"HQ_loc" : [91,101]})
> db.mapinfo.ensureIndex({"loc" : "2d"},{"background" : "true"})                                           
> db.mapinfo.ensureIndex({"HQ_loc" : "2d"},{"background" : "true"})
> db.mapinfo.getIndexes()
[
        {
                "name" : "_id_",
                "ns" : "test.mapinfo",
                "key" : {
                        "_id" : 1
                }
        },
        {
                "_id" : ObjectId("4d2439803238ba30f9ca05cd"),
                "ns" : "test.mapinfo",
                "key" : {
                        "loc" : "2d"
                },
                "name" : "loc_",
                "background" : "true"
        },
        {
                "_id" : ObjectId("4d2439863238ba30f9ca05ce"),
                "ns" : "test.mapinfo",
                "key" : {
                        "HQ_loc" : "2d"
                },
                "name" : "HQ_loc_",
                "background" : "true"
        }
]
> db.mapinfo.find({"loc" : {"$near" : [20,21]}})                                                           
{ "_id" : ObjectId("4d2439643238ba30f9ca05cc"), "category" : "bank", "name" : "china people bank", "loc" : [ 71, 81 ], "HQ_loc" : [ 91, 101 ] }
> db.mapinfo.find({"HQ_loc" : {"$near" : [20,21]}})
{ "_id" : ObjectId("4d2439643238ba30f9ca05cc"), "category" : "bank", "name" : "china people bank", "loc" : [ 71, 81 ], "HQ_loc" : [ 91, 101 ] }

# 使用范例2:
# 测试数据
> db.mapinfo.find()
{ "_id" : ObjectId("4d2439643238ba30f9ca05cc"), "category" : "bank", "name" : "china people bank", "loc" : [ 71, 81 ], "HQ_loc" : [ 91, 101 ] }
{ "_id" : ObjectId("4d243a743238ba30f9ca05cf"), "category" : "coffee", "name" : "digoal coffee bar", "loc" : [ 100, 81 ], "HQ_loc" : [ 100, 101 ] }
{ "_id" : ObjectId("4d243a8b3238ba30f9ca05d0"), "category" : "tea", "name" : "digoal tea bar", "loc" : [ 110, 81 ], "HQ_loc" : [ 110, 101 ] }
{ "_id" : ObjectId("4d243ab23238ba30f9ca05d1"), "category" : "shop", "name" : "digoal supermarket", "loc" : [ 120, 81 ], "HQ_loc" : [ 120, 101 ] }
{ "_id" : ObjectId("4d243aba3238ba30f9ca05d2"), "category" : "shop", "name" : "digoal supermarket1", "loc" : [ 121, 81 ], "HQ_loc" : [ 120, 101 ] }
{ "_id" : ObjectId("4d243abe3238ba30f9ca05d3"), "category" : "shop", "name" : "digoal supermarket2", "loc" : [ 122, 81 ], "HQ_loc" : [ 120, 101 ] }
{ "_id" : ObjectId("4d243ac33238ba30f9ca05d4"), "category" : "shop", "name" : "digoal supermarket3", "loc" : [ 123, 81 ], "HQ_loc" : [ 120, 101 ] }
{ "_id" : ObjectId("4d243ac83238ba30f9ca05d5"), "category" : "shop", "name" : "digoal supermarket4", "loc" : [ 124, 81 ], "HQ_loc" : [ 120, 101 ] }
{ "_id" : ObjectId("4d243ace3238ba30f9ca05d6"), "category" : "shop", "name" : "digoal supermarket5", "loc" : [ 125, 81 ], "HQ_loc" : [ 120, 101 ] }
{ "_id" : ObjectId("4d243ad63238ba30f9ca05d7"), "category" : "shop", "name" : "digoal supermarket6", "loc" : [ 126, 81 ], "HQ_loc" : [ 120, 101 ] }
{ "_id" : ObjectId("4d243aee3238ba30f9ca05d8"), "category" : "shop", "name" : "digoal supermarket7", "loc" : [ 26, 81 ], "HQ_loc" : [ 120, 101 ] }
{ "_id" : ObjectId("4d243af43238ba30f9ca05d9"), "category" : "shop", "name" : "digoal supermarket8", "loc" : [ 27, 81 ], "HQ_loc" : [ 120, 101 ] }
{ "_id" : ObjectId("4d243af93238ba30f9ca05da"), "category" : "shop", "name" : "digoal supermarket9", "loc" : [ 29, 81 ], "HQ_loc" : [ 120, 101 ] }
{ "_id" : ObjectId("4d243aff3238ba30f9ca05db"), "category" : "shop", "name" : "digoal supermarket10", "loc" : [ 30, 81 ], "HQ_loc" : [ 120, 101 ] }
{ "_id" : ObjectId("4d243b063238ba30f9ca05dc"), "category" : "shop", "name" : "digoal supermarket11", "loc" : [ 31, 81 ], "HQ_loc" : [ 120, 101 ] }
# 索引
> db.mapinfo.getIndexes()
[
        {
                "name" : "_id_",
                "ns" : "test.mapinfo",
                "key" : {
                        "_id" : 1
                }
        },
        {
                "_id" : ObjectId("4d2439803238ba30f9ca05cd"),
                "ns" : "test.mapinfo",
                "key" : {
                        "loc" : "2d"
                },
                "name" : "loc_",
                "background" : "true"
        },
        {
                "_id" : ObjectId("4d2439863238ba30f9ca05ce"),
                "ns" : "test.mapinfo",
                "key" : {
                        "HQ_loc" : "2d"
                },
                "name" : "HQ_loc_",
                "background" : "true"
        }
]
# 查询离[50,50]最近的5家商店
> db.mapinfo.find({"loc" : {"$near" : [50,50]},"category" : "shop"}).limit(5)
{ "_id" : ObjectId("4d243b063238ba30f9ca05dc"), "category" : "shop", "name" : "digoal supermarket11", "loc" : [ 31, 81 ], "HQ_loc" : [ 120, 101 ] }
{ "_id" : ObjectId("4d243aff3238ba30f9ca05db"), "category" : "shop", "name" : "digoal supermarket10", "loc" : [ 30, 81 ], "HQ_loc" : [ 120, 101 ] }
{ "_id" : ObjectId("4d243af93238ba30f9ca05da"), "category" : "shop", "name" : "digoal supermarket9", "loc" : [ 29, 81 ], "HQ_loc" : [ 120, 101 ] }
{ "_id" : ObjectId("4d243af43238ba30f9ca05d9"), "category" : "shop", "name" : "digoal supermarket8", "loc" : [ 27, 81 ], "HQ_loc" : [ 120, 101 ] }
{ "_id" : ObjectId("4d243aee3238ba30f9ca05d8"), "category" : "shop", "name" : "digoal supermarket7", "loc" : [ 26, 81 ], "HQ_loc" : [ 120, 101 ] }
# 找出限制离[50,50]在37 的商店,使用maxDistance
> db.mapinfo.find({"loc" : {"$near" : [50,50], "$maxDistance" : 37},"category" : "shop"})
{ "_id" : ObjectId("4d243b063238ba30f9ca05dc"), "category" : "shop", "name" : "digoal supermarket11", "loc" : [ 31, 81 ], "HQ_loc" : [ 120, 101 ] }
{ "_id" : ObjectId("4d243aff3238ba30f9ca05db"), "category" : "shop", "name" : "digoal supermarket10", "loc" : [ 30, 81 ], "HQ_loc" : [ 120, 101 ] }
# 复合索引
> db.mapinfo.ensureIndex({"loc" : "2d","category" : 1})                                                        
> db.mapinfo.getIndexes()
[
        {
                "name" : "_id_",
                "ns" : "test.mapinfo",
                "key" : {
                        "_id" : 1
                }
        },
        {
                "_id" : ObjectId("4d2439803238ba30f9ca05cd"),
                "ns" : "test.mapinfo",
                "key" : {
                        "loc" : "2d"
                },
                "name" : "loc_",
                "background" : "true"
        },
        {
                "_id" : ObjectId("4d2439863238ba30f9ca05ce"),
                "ns" : "test.mapinfo",
                "key" : {
                        "HQ_loc" : "2d"
                },
                "name" : "HQ_loc_",
                "background" : "true"
        },
        {
                "_id" : ObjectId("4d243ce13238ba30f9ca05dd"),
                "ns" : "test.mapinfo",
                "key" : {
                        "loc" : "2d",
                        "category" : 1
                },
                "name" : "loc__category_1"
        }
]

3. 范例 3
# 除了使用find来搜索以外,还可以使用runCommand
> db.runCommand({"geoNear" : "mapinfo","near" : [50,50],"num" : 10})
{ "errmsg" : "more than 1 geo indexes :(", "ok" : 0 }
# 这里报错,原因是mapinfo超过一个2d索引,但是使用find来查询不会报错,
# 只保留一个“2d"索引后,使用runCommand正常
> db.mapinfo.dropIndex({"loc" : "2d","category" : 1})
{ "nIndexesWas" : 4, "ok" : 1 }
> db.runCommand({"geoNear" : "mapinfo","near" : [50,50],"num" : 10})                     
{ "errmsg" : "more than 1 geo indexes :(", "ok" : 0 }
> db.mapinfo.dropIndex({"HQ_loc" : "2d"})                           
{ "nIndexesWas" : 3, "ok" : 1 }
# "num" 限制返回的记录数
# 使用runCommand和geoNear的好处是可以返回距离.本例"dis" : 36.3593194466869,
> db.runCommand({"geoNear" : "mapinfo","near" : [50,50],"num" : 1}) 
{
        "ns" : "test.mapinfo",
        "near" : "1100110000001111110000001111110000001111110000001111",
        "results" : [
                {
                        "dis" : 36.3593194466869,
                        "obj" : {
                                "_id" : ObjectId("4d243b063238ba30f9ca05dc"),
                                "category" : "shop",
                                "name" : "digoal supermarket11",
                                "loc" : [
                                        31,
                                        81
                                ],
                                "HQ_loc" : [
                                        120,
                                        101
                                ]
                        }
                }
        ],
        "stats" : {
                "time" : 0,
                "btreelocs" : 6,
                "nscanned" : 7,
                "objectsLoaded" : 3,
                "avgDistance" : 36.3593194466869,
                "maxDistance" : 36.3593194466869
        },
        "ok" : 1
}
# 使用runCommand同样也可以使用普通的FIND的限制条件,如下放在query : { "category" : "coffee" }
> db.runCommand({"geoNear" : "mapinfo","near" : [50,50],"num" : 1,query : { "category" : "coffee" }})
{
        "ns" : "test.mapinfo",
        "near" : "1100110000001111110000001111110000001111110000001111",
        "results" : [
                {
                        "dis" : 58.830266786369556,
                        "obj" : {
                                "_id" : ObjectId("4d243a743238ba30f9ca05cf"),
                                "category" : "coffee",
                                "name" : "digoal coffee bar",
                                "loc" : [
                                        100,
                                        81
                                ],
                                "HQ_loc" : [
                                        100,
                                        101
                                ]
                        }
                }
        ],
        "stats" : {
                "time" : 0,
                "btreelocs" : 15,
                "nscanned" : 15,
                "objectsLoaded" : 7,
                "avgDistance" : 58.830266786369556,
                "maxDistance" : 58.830266786369556
        },
        "ok" : 1
}

4. 范例4
# 空间索引还支持范围搜索,目前支持圆和矩阵的范围
# 使用box
> box = [[19,19],[90,90]]                                
[ [ 19, 19 ], [ 90, 90 ] ]
> db.mapinfo.find({"loc" : {"$within" : {"$box" : box}}})
{ "_id" : ObjectId("4d2439643238ba30f9ca05cc"), "category" : "bank", "name" : "china people bank", "loc" : [ 71, 81 ], "HQ_loc" : [ 91, 101 ] }
{ "_id" : ObjectId("4d243b063238ba30f9ca05dc"), "category" : "shop", "name" : "digoal supermarket11", "loc" : [ 31, 81 ], "HQ_loc" : [ 120, 101 ] }
{ "_id" : ObjectId("4d243aff3238ba30f9ca05db"), "category" : "shop", "name" : "digoal supermarket10", "loc" : [ 30, 81 ], "HQ_loc" : [ 120, 101 ] }
{ "_id" : ObjectId("4d243af93238ba30f9ca05da"), "category" : "shop", "name" : "digoal supermarket9", "loc" : [ 29, 81 ], "HQ_loc" : [ 120, 101 ] }
{ "_id" : ObjectId("4d243af43238ba30f9ca05d9"), "category" : "shop", "name" : "digoal supermarket8", "loc" : [ 27, 81 ], "HQ_loc" : [ 120, 101 ] }
{ "_id" : ObjectId("4d243aee3238ba30f9ca05d8"), "category" : "shop", "name" : "digoal supermarket7", "loc" : [ 26, 81 ], "HQ_loc" : [ 120, 101 ] }
# 使用center point and radius
> center = [29,81]
[ 29, 81 ]
> radius = 10
10
> db.mapinfo.find({"loc" : {"$within" : {"$center" : [center,radius]}}})
{ "_id" : ObjectId("4d243af93238ba30f9ca05da"), "category" : "shop", "name" : "digoal supermarket9", "loc" : [ 29, 81 ], "HQ_loc" : [ 120, 101 ] }
{ "_id" : ObjectId("4d243af43238ba30f9ca05d9"), "category" : "shop", "name" : "digoal supermarket8", "loc" : [ 27, 81 ], "HQ_loc" : [ 120, 101 ] }
{ "_id" : ObjectId("4d243aff3238ba30f9ca05db"), "category" : "shop", "name" : "digoal supermarket10", "loc" : [ 30, 81 ], "HQ_loc" : [ 120, 101 ] }
{ "_id" : ObjectId("4d243b063238ba30f9ca05dc"), "category" : "shop", "name" : "digoal supermarket11", "loc" : [ 31, 81 ], "HQ_loc" : [ 120, 101 ] }
{ "_id" : ObjectId("4d243aee3238ba30f9ca05d8"), "category" : "shop", "name" : "digoal supermarket7", "loc" : [ 26, 81 ], "HQ_loc" : [ 120, 101 ] }

注意事项:
1. mongoDB处理的是平面距离,但是实际生活中如果涉及到大范围的距离搜索,可能会有偏差,因为地球是球型的。The current implementation assumes an idealized model of a flat earth, meaning that an arcdegree of latitude (y) and longitude (x) represent the same distance everywhere. This is only true at the equator where they are both about equal to 69 miles or 111km. However, at the 10gen offices at  { x : -74 , y : 40.74 } one arcdegree of longitude is about 52 miles or 83 km (latitude is unchanged). This means that something 1 mile to the north would seem closer than something 1 mile to the east.
2. 2d索引目前还不支持sharding,In the meantime sharded clusters can use geospatial indexes for unsharded collections within the cluster.
3. New Spherical Model,1.7.0以后将引入新的空间模型.

其他:
The current implementation encodes geographic hash codes atop standard MongoDB b-trees. Results of $near queries are exact. The problem with geohashing is that prefix lookups don't give you exact results, especially around bit flip areas. MongoDB solves this by doing a grid by grid search after the initial prefix scan. This guarantees performance remains very high while providing correct results
<think>好的,我现在需要帮用户解决关于MongoDB地理位置索引的问题。首先,我要确认用户的需求。用户问的是“如何在MongoDB中创建和使用地理位置索引”,需要教程、创建方法和示例。根据提供的引用内容,特别是引用[3]和[4],我需要整理相关信息。 首先,我得回忆MongoDB地理位置索引类型。通常有两种:2d和2dsphere。2d适用于平面坐标,而2dsphere用于地理空间坐标如经纬度。用户可能需要知道这两种的区别和适用场景。 接下来,创建索引的方法。根据引用中的示例,比如引用[2]展示了文本索引的创建,类似地,地理位置索引应该使用createIndex方法。例如,对于2dsphere索引,命令应该是db.collection.createIndex({字段名: "2dsphere"})。需要确保用户的数据结构正确,比如字段是GeoJSON格式或者传统坐标对。 然后,使用场景和查询操作。引用[4]提到了$geoWithin和$box的示例,用户可能需要知道其他操作符如$near、$geoNear等。需要解释每个操作符的作用,并提供示例代码。 另外,注意事项也很重要。比如创建索引前需要数据格式正确,2dsphere需要GeoJSON,而2d则使用传统坐标。还要提到性能优化,索引对写入的影响,以及地理空间查询的限制。 现在,检查提供的引用材料。引用[3]提到了索引管理的基本概念,引用[4]给出了一个查询示例。需要确保回答中包含创建步骤、示例代码和不同查询方法的应用。 可能需要分步骤说明:创建前的数据准备、创建索引的命令、不同查询操作符的使用,以及示例。同时,要引用提供的参考资料,比如引用[4]中的示例,并在末尾添加引用标识。 最后,生成相关问题,比如如何优化地理位置查询性能,或者如何处理不同类型的地理数据。这样用户可以有进一步的学习方向。</think>### MongoDB地理位置索引使用教程 #### 一、数据准备 创建地理位置索引前,文档中需包含地理坐标字段,支持两种格式: 1. **GeoJSON格式**(推荐):例如`{ type: "Point", coordinates: [经度, 纬度] }` 2. **传统坐标对**:例如`[经度, 纬度]`,但需注意查询时使用`$box`等操作符需严格匹配格式[^4] #### 二、创建索引 MongoDB提供两种地理位置索引类型: 1. **2dsphere索引**(地球球面) ```javascript db.shop.createIndex({ loc: "2dsphere" }) // 创建基于GeoJSON的索引 ``` 2. **2d索引**(平面坐标系) ```javascript db.shop.createIndex({ loc: "2d" }) // 传统坐标对索引 ``` #### 三、查询操作 通过`$geoWithin`、`$near`等操作符实现空间查询: 1. **矩形范围查询**(使用2d索引) ```javascript db.shop.find({ loc: { "$geoWithin": { "$box": [[9,9], [11,11]] // 左下角坐标 → 右上角坐标 } } }) // ``` 2. **圆形范围查询**(2dsphere索引) ```javascript db.shop.find({ loc: { $geoWithin: { $centerSphere: [[120.67, 31.32], 0.01] // 中心坐标 + 半径(弧度) } } }) ``` 3. **邻近点查询** ```javascript db.shop.find({ loc: { $near: { $geometry: { type: "Point", coordinates: [121.47, 31.23] }, $maxDistance: 1000 // 最大距离(米) } } }) ``` #### 四、最佳实践 1. **数据标准化**:优先使用GeoJSON格式,便于支持更复杂的空间计算 2. **复合索引**:对经常组合查询的字段(如位置+品类)创建复合索引 ```javascript db.shop.createIndex({ loc: "2dsphere", category: 1 }) ``` 3. **性能监控**:通过`explain()`分析查询执行计划
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