app.py 13 KB

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  1. from flask import Flask, render_template, request, jsonify
  2. from flask_cors import CORS
  3. import psycopg2
  4. from psycopg2.extras import DictCursor
  5. import logging
  6. import ollama
  7. import json
  8. import datetime
  9. import uuid
  10. app = Flask(__name__)
  11. CORS(app)
  12. # 配置日志
  13. logging.basicConfig(level=logging.INFO)
  14. logger = logging.getLogger(__name__)
  15. # 连接数据库
  16. conn = psycopg2.connect(
  17. dbname="real3d",
  18. user="postgres",
  19. password="postgis",
  20. host="192.168.100.30",
  21. port="5432"
  22. )
  23. # 后台接口
  24. @app.route("/")
  25. def home():
  26. return render_template('index.html')
  27. # 后台接口
  28. @app.route("/hello")
  29. def hello():
  30. return "Hello, World!"
  31. # 接收消息,大模型解析
  32. @app.route('/msg', methods=['POST'])
  33. def inputMsg():
  34. # 从请求中获取JSON数据
  35. data = request.get_json()
  36. # 检查是否接收到数据
  37. if not data:
  38. return jsonify({"error": "No data received"}), 400
  39. # 打印接收到的消息
  40. print(data['msg'])
  41. msg = data['msg']
  42. # 调用大模型解析
  43. # 这里调用大模型,并返回解析结果
  44. # 生成提示信息
  45. # 定义输入信息变量
  46. # 生成提示信息
  47. # 生成提示信息
  48. prompt = f"""请扮演文本提取工具,把这句话:"{msg}",基于以下因子选择、选址范围和用地类型提取其对应的相关数据,提取结果请严格将json格式字符串输出并保障寄送格式正确无误,
  49. 选址范围 = ['抱坡区','天涯区','崖州区','海棠区','吉阳区'],
  50. 因子选择 = [
  51. "高程",
  52. "坡度",
  53. "永久基本农田",
  54. "城镇开发边界内",
  55. "生态保护红线",
  56. "文化保护区",
  57. "自然保护地",
  58. "风景名胜区",
  59. "国有使用权",
  60. "河道管理线",
  61. "水库",
  62. "公益林",
  63. "火葬场",
  64. "垃圾处理场",
  65. "污水处理场",
  66. "高压线",
  67. "变电站",
  68. "古树",
  69. "城市道路",
  70. "主要出入口",
  71. "文化活动设施",
  72. "体育运动场所",
  73. "排水",
  74. "供水",
  75. "燃气",
  76. "电力",
  77. "电信",
  78. "十五分钟社区生活圈邻里中心",
  79. "社区服务设施",
  80. "零售商业场所",
  81. "医疗卫生设施",
  82. "幼儿园服务半径",
  83. "小学服务半径",
  84. "为老服务设施"
  85. ]
  86. 用地类型=['园地', '耕地', '林地', '草地', '湿地', '公共卫生用地', '老年人社会福利用地', '儿童社会福利用地', '残疾人社会福利用地', '其他社会福利用地', '零售商业用地', '批发市场用地', '餐饮用地', '旅馆用地', '公用设施营业网点用地', '娱乐用地', '康体用地', '一类工业用地', '二类工业用地', '广播电视设施用地', '环卫用地', '消防用地', '干渠', '水工设施用地', '其他公用设施用地', '公园绿地', '防护绿地', '广场用地', '军事设施用地', '使领馆用地', '宗教用地', '文物古迹用地', '监教场所用地', '殡葬用地', '其他特殊用地', '河流水面', '湖泊水面', '水库水面', '坑塘水面', '沟渠', '冰川及常年积雪', '渔业基础设施用海', '增养殖用海', '捕捞海域', '工业用海', '盐田用海', '固体矿产用海', '油气用海', '可再生能源用海', '海底电缆管道用海', '港口用海', '农业设施建设用地', '耕地', '园地', '林地', '工矿用地', '畜禽养殖设施建设用地', '水产养殖设施建设用地', '城镇住宅用地', '草地', '湿地', '留白用地', '陆地水域', '游憩用海', '特殊用海', '特殊用地', '其他海域', '居住用地', '绿地与开敞空间用地', '水田', '水浇地', '旱地', '果园', '茶园', '橡胶园', '其他园地', '乔木林地', '竹林地', '城镇社区服务设施用地', '农村宅基地', '农村社区服务设施用地', '机关团体用地', '科研用地', '文化用地', '教育用地', '体育用地', '医疗卫生用地', '社会福利用地', '商业用地', '商务金融用地', '二类农村宅基地', '图书与展览用地', '文化活动用地', '高等教育用地', '中等职业教育用地', '体育训练用地', '其他交通设施用地', '供水用地', '排水用地', '供电用地', '供燃气用地', '供热用地', '通信用地', '邮政用地', '医院用地', '基层医疗卫生设施用地', '田间道', '盐碱地', '沙地', '裸土地', '裸岩石砾地', '村道用地', '村庄内部道路用地', '渔业用海', '工矿通信用海', '其他土地', '公共管理与公共服务用地', '仓储用地', '交通运输用地', '公用设施用地', '交通运输用海', '航运用海', '路桥隧道用海', '风景旅游用海', '文体休闲娱乐用海', '军事用海', '其他特殊用海', '空闲地', '田坎', '港口码头用地', '管道运输用地', '城市轨道交通用地', '城镇道路用地', '交通场站用地', '一类城镇住宅用地', '二类城镇住宅用地', '三类城镇住宅用地', '一类农村宅基地', '商业服务业用地', '三类工业用地', '一类物流仓储用地', '二类物流仓储用地', '三类物流仓储用地', '盐田', '对外交通场站用地', '公共交通场站用地', '社会停车场用地', '中小学用地', '幼儿园用地', '其他教育用地', '体育场馆用地', '灌木林地', '其他林地', '天然牧草地', '人工牧草地', '其他草地', '森林沼泽', '灌丛沼泽', '沼泽草地', '其他沼泽地', '沿海滩涂', '内陆滩涂', '红树林地', '乡村道路用地', '种植设施建设用地', '娱乐康体用地', '其他商业服务业用地', '工业用地', '采矿用地', '物流仓储用地', '储备库用地', '铁路用地', '公路用地', '机场用地']
  87. landType是用地类型
  88. districtName是选址范围
  89. area是用地大小,单位统一转换为亩
  90. factors.type是因子选择
  91. 其他公里、千米的单位转换为米
  92. 默认输出的json格式数据如下:
  93. {{
  94. "districtName": "抱坡区",
  95. "landType": "耕地",
  96. "area": {{
  97. "min": 30,
  98. "max": 50
  99. }},
  100. "factors": [
  101. {{
  102. "type": "水库",
  103. "condition": "大于",
  104. "value": "100"
  105. }},
  106. {{
  107. "type": "永久基本农田",
  108. "condition": "不相交",
  109. "value": "0"
  110. }},
  111. {{
  112. "type": "城镇开发边界内",
  113. "condition": "包含",
  114. "value": "0"
  115. }},
  116. {{
  117. "type": "医疗卫生设施",
  118. "condition": "小于",
  119. "value": "500"
  120. }},
  121. ]
  122. }}
  123. 把json中"condition"的值改为"gt"、"lt"、"get"、"let"、"between","not_intersect"、"intersect"、"not_contain"、"contain"、"between"
  124. """
  125. try:
  126. res = ollama.generate(
  127. model="qwen2:7b",
  128. # model="gemma2:27b",
  129. stream=False,
  130. prompt=prompt,
  131. options={"temperature": 0},
  132. format="json",
  133. keep_alive=-1
  134. )
  135. print(res["response"])
  136. except Exception as e:
  137. print(f"生成过程中出现错误: {e}")
  138. json_res = res["response"]
  139. json_res = json.loads(json_res)
  140. # 组织成选址需要的数据格式
  141. json_res = jsonResToDict(json_res)
  142. # 返回响应
  143. return jsonify(json_res)
  144. # 将大模型解析的结果转换为选址需要的数据格式
  145. def jsonResToDict(json_res):
  146. # 1.查询选址范围信息
  147. districtName = json_res["districtName"]
  148. ewkt = getAiDistrict(districtName)
  149. # 2.保存选址范围信息
  150. geomId = saveGeom(ewkt)
  151. # 3.获取用地类型信息
  152. landType = json_res["landType"]
  153. landType = getLandType(landType, "YDYHFLDM")
  154. # 4.获取模板信息
  155. factorTemplates = getTemplateByCode(landType)
  156. # TODO 以哪个因子列表为准,模版和因子个数怎么匹配
  157. now = datetime.datetime.now()
  158. formatted_time = now.strftime("%Y%m%d%H%M%S")
  159. res = {
  160. "xzmj": 1500,
  161. "xmmc": "聊天选址项目_"+formatted_time,
  162. "jsdw": "建设单位",
  163. "ydxz_bsm": landType,
  164. "ydmjbegin": json_res["area"]["min"],
  165. "ydmjend": json_res["area"]["max"],
  166. "geomId": geomId,
  167. "yxyz": [],
  168. # TODO: 循环遍历
  169. # "yxyz": [
  170. # {
  171. # "id": "259e5bbaab434dbfb9c679bd44d4bfa4",
  172. # "name": "幼儿园服务半径",
  173. # "bsm": "TB_YEY",
  174. # "conditionInfo": {
  175. # "spatial_type": "distance",
  176. # "default": "lt",
  177. # "hasValue": true,
  178. # "defaultValue": "300",
  179. # "unit": "米",
  180. # "clip": false
  181. # }
  182. # }
  183. # ],
  184. # "useMultiple": json_res["useMultiple"],
  185. # "useLandType": json_res["useLandType"],
  186. # "multipleDistance": json_res["multipleDistance"]
  187. }
  188. # 循环遍历输入因子
  189. factors = json_res["factors"]
  190. input_factors = {}
  191. for factor in factors:
  192. factorInfo = getFactorByName(factor["type"])
  193. if factorInfo == None:
  194. continue
  195. factorId = factorInfo["id"]
  196. factorBsm = factorInfo["bsm"]
  197. conditionInfo = factorInfo["condition_info"]
  198. conditionObj = json.loads(conditionInfo)
  199. factor_info = {
  200. "id": factorId,
  201. "name": factor["type"],
  202. "bsm": factorBsm,
  203. "conditionInfo": {
  204. "spatial_type": conditionObj["spatial_type"],
  205. "default": factor["condition"],
  206. "hasValue": conditionObj["hasValue"],
  207. "defaultValue": str(factor["value"]),
  208. "unit": conditionObj["unit"],
  209. "clip": conditionObj["clip"]
  210. }
  211. }
  212. input_factors[factor_info["id"]] = factor_info
  213. # 循环遍历模板
  214. for factorTemplate in factorTemplates:
  215. factorId = factorTemplate["id"]
  216. if factorId in input_factors:
  217. res["yxyz"].append(input_factors[factorId])
  218. else:
  219. factorTemplate["conditionInfo"]=json.loads(factorTemplate["conditionInfo"])
  220. res["yxyz"].append(factorTemplate)
  221. resObj={}
  222. resObj["data"]=res
  223. resObj["code"]=200
  224. resObj["type"]="selectLand"
  225. return resObj
  226. # 获取因子信息
  227. def getFactorByName(name):
  228. with conn.cursor(cursor_factory=DictCursor) as cur:
  229. sql = "SELECT * FROM base.t_fzss_fzxz_factor WHERE name = %s"
  230. complete_sql = cur.mogrify(sql, (name,)).decode('utf-8')
  231. logger.info(f"Executing SQL: {complete_sql}")
  232. cur.execute(sql, (name,))
  233. res = cur.fetchone()
  234. return res
  235. # 获取内置模板信息
  236. def getTemplateByCode(code):
  237. with conn.cursor(cursor_factory=DictCursor) as cur:
  238. sql = 'SELECT factor_id as id,factor_name as name,factor_bsm as bsm,condition_info as "conditionInfo" FROM base.t_fzss_fzxz_factor_temp WHERE land_type_code = %s'
  239. complete_sql = cur.mogrify(sql, (code,)).decode('utf-8')
  240. logger.info(f"Executing SQL: {complete_sql}")
  241. cur.execute(sql, (code,))
  242. res = cur.fetchall()
  243. # 将查询结果转换为字典列表
  244. result_list = [dict(row) for row in res]
  245. return result_list
  246. # 获取选址范围信息
  247. def getAiDistrict(name):
  248. with conn.cursor(cursor_factory=DictCursor) as cur:
  249. sql = "SELECT public.st_asewkt(geom) as geom FROM base.t_fzss_fzxz_ai_district WHERE name = %s"
  250. complete_sql = cur.mogrify(sql, (name,)).decode('utf-8')
  251. logger.info(f"Executing SQL: {complete_sql}")
  252. cur.execute(sql, (name,))
  253. res = cur.fetchone()
  254. return res["geom"]
  255. # 保存选址范围信息
  256. def saveGeom(ewkt):
  257. new_uuid = str(uuid.uuid4()) # 生成一个新的 UUID
  258. from_type = 3
  259. with conn.cursor() as cur:
  260. sql = "INSERT INTO base.t_fzss_zhxz_file(id,geom,from_type,create_time,area) VALUES (%s,public.st_geomfromewkt(%s),%s,now(),public.st_area(public.st_geomfromewkt(%s)::public.geography))"
  261. complete_sql = cur.mogrify(
  262. sql, (new_uuid, ewkt, from_type, ewkt)).decode('utf-8')
  263. logger.info(f"Executing SQL: {complete_sql}")
  264. cur.execute(sql, (new_uuid, ewkt, from_type, ewkt))
  265. conn.commit()
  266. return new_uuid
  267. # 获取用地类型信息
  268. def getLandType(landName, fzbs):
  269. with conn.cursor(cursor_factory=DictCursor) as cur:
  270. sql = "SELECT dm,mc,fzbs FROM base.t_fzss_fzxz_dict WHERE mc = %s and fzbs=%s"
  271. complete_sql = cur.mogrify(sql, (landName, fzbs)).decode('utf-8')
  272. logger.info(f"Executing SQL: {complete_sql}")
  273. cur.execute(sql, (landName, fzbs))
  274. res = cur.fetchone()
  275. return res["dm"]
  276. # getTemplateByCode("08")
  277. # getAiDistrict("抱坡区")
  278. # ewkt="SRID=4326;POLYGON ((109.568515723151 18.2729002407864, 109.564270326708 18.2607742953866, 109.580087492139 18.2571512198688, 109.588461804591 18.2570597503377, 109.58884305979 18.2645363088176, 109.582107142538 18.2732736518031, 109.568515723151 18.2729002407864))"
  279. # saveGeom(ewkt)
  280. # getFactorByName("幼儿园服务半径")
  281. if __name__ == '__main__':
  282. # app.run()
  283. app.run(host='0.0.0.0')