Journal of System Simulation ›› 2024, Vol. 36 ›› Issue (3): 608-624.doi: 10.16182/j.issn1004731x.joss.22-1256
• Papers • Previous Articles Next Articles
Zhang Dayong1(), Yang Jingyu2, Ma Jun2, Song Chenye1
Received:
2022-10-20
Revised:
2022-12-09
Online:
2024-03-15
Published:
2024-03-14
CLC Number:
Zhang Dayong, Yang Jingyu, Ma Jun, Song Chenye. Construction of Machine Learning Data Set for Analyzing the Replay of the Wargaming[J]. Journal of System Simulation, 2024, 36(3): 608-624.
Table 2
Granularity design of measurement data of equipment entity number quality feature classification tree
序号 | 1级 | 2级 | 3级 | 4级 | 序号 | 1级 | 2级 | 3级 | 4级 |
---|---|---|---|---|---|---|---|---|---|
1 | 飞机实体 | 歼击机 | 歼击机1 | 挂载方案 | 38 | 舰船 实体 | 航母 | 航母1 | — |
2 | 歼击机2 | 挂载方案 | 39 | 航母2 | — | ||||
3 | 轰炸机 | 轰炸机1 | 挂载方案 | 40 | 巡洋舰 | 巡洋舰1 | — | ||
4 | 轰炸机2 | 挂载方案 | 41 | 巡洋舰2 | — | ||||
5 | 轰炸机3 | 挂载方案 | 42 | 巡洋舰3 | — | ||||
6 | 预警机 | 预警机1 | 挂载方案 | 43 | 驱逐舰 | 驱逐舰1 | — | ||
7 | 预警机2 | 挂载方案 | 44 | 驱逐舰2 | — | ||||
8 | 预警机3 | 挂载方案 | 45 | 驱逐舰3 | — | ||||
9 | 反潜机 | 反潜机1 | 挂载方案 | 46 | 驱逐舰4 | — | |||
10 | 反潜机2 | 挂载方案 | 47 | 护卫舰 | 护卫舰1 | — | |||
11 | 反潜机3 | 挂载方案 | 48 | 护卫舰2 | — | ||||
12 | 电子战飞机 | 电子战飞机1 | 挂载方案 | 49 | 护卫舰3 | — | |||
13 | 电子战飞机2 | 挂载方案 | 50 | 登陆舰 | 登陆舰1 | — | |||
14 | 电子战飞机3 | 挂载方案 | 51 | 登陆舰2 | — | ||||
15 | 加油机 | — | 挂载方案 | 52 | 登陆舰3 | — | |||
16 | 直升机 | 直升机1 | 挂载方案 | 53 | 扫雷舰 | 扫雷舰1 | — | ||
17 | 直升机2 | 挂载方案 | 54 | 扫雷舰2 | — | ||||
18 | 直升机3 | 挂载方案 | 55 | 导弹艇 | 导弹艇1 | — | |||
19 | 运输机 | 运输机1 | — | 56 | 导弹艇2 | — | |||
20 | 运输机2 | — | 57 | 潜艇 | 潜艇1 | — | |||
21 | 运输机3 | — | 58 | 潜艇2 | — | ||||
22 | 无人机 | 无人机1 | 挂载方案 | 59 | 潜艇3 | — | |||
23 | 无人机2 | 挂载方案 | 60 | 作战支援舰 | 作战支援舰1 | — | |||
24 | 无人机3 | 挂载方案 | 61 | 作战支援舰2 | — | ||||
25 | 其他飞机 | — | — | 62 | 作战支援舰3 | — | |||
26 | 地面装备 实体 | 装甲 | — | — | 63 | 保障舰船 | 保障舰船1 | — | |
27 | 火炮 | — | — | 64 | 保障舰船2 | — | |||
28 | 反坦克 | — | — | 65 | 保障舰船3 | — | |||
29 | 工程 | — | — | 66 | 无人艇 | 无人艇 | — | ||
30 | 化学 | — | — | 67 | 无人潜 | — | |||
31 | 运输车 | — | — | 68 | 民船 | 民船1 | — | ||
32 | 单兵武器 | — | — | 69 | 民船2 | — | |||
33 | 远程火箭 | — | — | 70 | 民船3 | — | |||
34 | 侦察预警系统 | 近程 | — | ||||||
35 | 中程 | — | |||||||
36 | 远程 | — | |||||||
37 | 导弹发射系统 | — | — |
Table 3
Granularity design of measurement data of action instruction type feature classification tree
序号 | 1级 | 2级分类 | 序号 | 1级 | 2级分类 | 序号 | 1级 | 2级分类 |
---|---|---|---|---|---|---|---|---|
1 | 侦察预警 | 空中侦察 | 23 | 海上行动 | 创建编队 | 48 | 特种作战 | 编组 |
2 | 空中预警 | 24 | 加入编队 | 49 | 机动 | |||
3 | 空中巡逻 | 25 | 编队分批 | 50 | 袭击 | |||
4 | 空中游猎 | 26 | 解散编队 | 51 | 设伏 | |||
5 | 海上侦察 | 27 | 潜艇潜浮 | 52 | 巡逻 | |||
6 | 潜艇游猎 | 28 | 取消任务 | 53 | 掩护 | |||
7 | 对海雷达 | 29 | 弃船 | 54 | 空机降 | |||
8 | 对空雷达 | 30 | 取消支援 | 55 | 信息作战 | 电子战 | ||
9 | 火力打击 | 导弹发射 | 31 | 空中行动 | 空中加油 | 56 | 雷达干扰 | |
10 | 炮火准备 | 32 | 取消任务 | 57 | 通信干扰 | |||
11 | 空对空 | 33 | 调整目标 | 58 | 心理战 | |||
12 | 空对地/舰 | 34 | 调整清单 | 59 | 无人作战 | 蜂群侦察 | ||
13 | 反潜 | 35 | 机场外借 | 60 | 蜂群进攻 | |||
14 | 防空拦截 | 36 | 更改机场 | 61 | 电子攻击 | |||
15 | 反导拦截 | 37 | 跑道获权 | 62 | 反辐射 | |||
16 | 舰炮拦截 | 38 | 防卫作战 | 进攻 | 63 | 后装保障 | 定期补给 | |
17 | 兵力调整 | 海上机动 | 39 | 防御 | 64 | 临机补给 | ||
18 | 陆上机动 | 40 | 撤退 | 65 | 后勤支援 | |||
19 | 飞机转场 | 41 | 伏击 | 66 | 保障调整 | |||
20 | 空运空投 | 42 | 警戒 | 67 | 海运物资 | |||
21 | 空中待战 | 43 | 抗登陆 | 68 | 空运物资 | |||
22 | 两栖装载 | 44 | 布雷 | 69 | 抢修 | |||
45 | 扫雷 | |||||||
46 | 海上布雷 | |||||||
47 | 海上扫雷 |
Table 4
Granularity differentiation design of war damage concept hierarchy tree
序号 | 1层 | 2层 | 3层 | 序号 | 1层 | 2层 | 3层 |
---|---|---|---|---|---|---|---|
1 | 人员战损 | 作战人员 | — | 38 | 舰船战损 | 登陆舰 | 登陆舰1 |
2 | 保障人员 | — | 39 | 登陆舰2 | |||
3 | 飞机战损 | 歼击机 | 歼击机1 | 40 | 登陆舰3 | ||
4 | 歼击机2 | 41 | 扫雷舰 | 扫雷舰1 | |||
5 | 轰炸机 | 轰炸机1 | 42 | 扫雷舰2 | |||
6 | 轰炸机2 | 43 | 导弹艇 | 导弹艇1 | |||
7 | 轰炸机3 | 44 | 导弹艇2 | ||||
8 | 预警机 | 预警机1 | 45 | 潜艇 | 潜艇1 | ||
9 | 预警机2 | 46 | 潜艇2 | ||||
10 | 预警机3 | 47 | 潜艇3 | ||||
11 | 反潜机 | 反潜机1 | 48 | 无人艇 | 无人艇 | ||
12 | 反潜机2 | 49 | 无人潜 | ||||
13 | 反潜机3 | 50 | 民船 | 民船1 | |||
14 | 电子战飞机 | 电子战飞机1 | 51 | 民船2 | |||
15 | 电子战飞机2 | 52 | 民船3 | ||||
16 | 加油机 | — | 53 | 地面装备战损 | 装甲 | — | |
17 | 直升机 | 直升机1 | 54 | 火炮 | — | ||
18 | 直升机2 | 55 | 反坦克 | — | |||
19 | 运输机 | 运输机1 | 56 | 工程 | — | ||
20 | 运输机2 | 57 | 化学 | — | |||
21 | 运输机3 | 58 | 运输车 | — | |||
22 | 无人机 | 无人机1 | 59 | 单兵武器 | — | ||
23 | 无人机2 | 60 | 远程火箭 | — | |||
24 | 无人机3 | 61 | 侦察预警系统 | — | |||
25 | 其他飞机 | — | 62 | 导弹发射系统 | — | ||
26 | 舰船战损 | 航母 | 航母1 | 63 | 目标战损 | 指挥所 | — |
27 | 航母2 | 64 | 火炮阵地 | — | |||
28 | 巡洋舰 | 巡洋舰1 | 65 | 预警雷达 | — | ||
29 | 巡洋舰2 | 66 | 防空阵地 | — | |||
30 | 巡洋舰3 | 67 | 通信站点 | — | |||
31 | 驱逐舰 | 驱逐舰1 | 68 | 机场设施 | — | ||
32 | 驱逐舰2 | 69 | 政治目标 | — | |||
33 | 驱逐舰3 | 70 | 经济目标 | — | |||
34 | 驱逐舰4 | 71 | 民生目标 | — | |||
35 | 护卫舰 | 护卫舰1 | 72 | 其他目标 | — | ||
36 | 护卫舰2 | ||||||
37 | 护卫舰3 |
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