2019工业信息安全技能大赛个人线上赛第一场writeup

2019年工业信息安全技能大赛个人线上赛(第一场)writeup

1.1.Modbus协议分析(签到题)[未解决]

题目:黑客通过外网进入一家工厂的控制网络,之后对工控网络中的操作员站系统进行了攻击,最终通过工控协议破坏了正常的业务。我们得到了操作员站在攻击前后的网络流量数据包,我们需要分析流量中的蛛丝马迹,找到FLAG。

附件下载:1.1.Modbus协议分析(签到题)

利用scu–igroup得到如下

6ED8204B-0D39-46CB-A487-722EDF12AD8C

得到的是16进制,我目前暂未解决,但是感觉就是70,我们去转换字符,得到

image

去提交,试了好多种格式,还是不对,可能不是这个包吧(逃。

注:

比赛结束后,经人指点,说我这个包不是签到题的那个,我。。。。。我再去下载一看还真不是,难道是我搞错了?

莫名其妙。 下面是我找到的flag,瑟瑟发抖。麻痹大意。(逃。

image

1.2.工业协议分析1

题目:工业网络中存在异常,尝试通过分析PCAP流量包,分析出流量数据中的异常点,并拿到FLAG。

附件下载:1.2.工业协议分析1

首先利用scu–igroup大佬的脚本跑了下,未发现有用的信息。之后放到kali里面搜了下关键词png,发现了base64加密的图片

6C87E706BFE7D1B12BA8637FCA6E6856

导出数据

1
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

解密得到图片

image

1.3.工业协议分析2

题目:在进行工业企业检查评估工作中,发现了疑似感染恶意软件的上位机。现已提取出上位机通信流量,尝试分析出异常点,获取FLAG。

附件下载:1.3.工业协议分析2

wireshark打开后直接审计出的,你会发现好多包里都有这串16进制的数。

image-20190729110250337

copy,我们去转换字符,得到flag{7FoM2StkhePz},提交格式:7FoM2StkhePz

1.4.组态软件安全分析

题目:一些组态软件中进行会配置连接很多PLC设备信息。我们在SCADA 工程中写入了flag字段,请获取该工程flag

附件下载:1.4.组态软件安全分析

首先下载附件得到test.PCZ文件,直接文本打开发现是以PK开头的文件

image-20190729111216252

修改后缀为zip,打开发现一个文件夹,一个xml(加密,暂时不管),然后把文件夹拖到mac里直接使用命令搜索flag

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find . -exec cat {} \; |grep -a "flag"

image-20190729111729563

得到flag{D076-4D7E-92AC-A05ACB788292},提交格式:D076-4D7E-92AC-A05ACB788292

1.5.工控蜜罐日志分析

题目:工控安全分析人员在互联网上部署了工控仿真蜜罐,通过蜜罐可抓取并分析互联网上针对工业资产的扫描行为,将存在高危扫描行为的IP加入防火墙黑名单可有效减少工业企业对于互联网的攻击面。分析出日志中针对西门子私有通信协议扫描最多的IP,分析该扫描组织。FLAG为该IP的域名。

附件下载:1.5.工控蜜罐日志分析

解压附件到本地,得到honeypot.log。直接提取ip,去重。

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cat honeypot.log | grep -o '\([0-9]\{1,3\}\.\)\{3\}[0-9]\{1,3\}'|sort -d | uniq  >> IPFile2.txt

然后nslookup反查域名。

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flie = open('IPFile2.txt','r')
import os

ip = list()

count = [0 for i in range(0,600)]

ip.append(flie.readline())

while True:
line = flie.readline()
if not line:
break
flag = 0
for i in range(0,len(ip)):
if ip[i] == line:
count[i] += 1
flag = 1
if flag == 0:
ip.append(line)

for i in range(0,len(count)):
for j in range(0,len(count)-1):
if count[j] < count[j+1]:
temp = count[j+1]
count[j+1] = count[j]
count[j] = temp
temp2 = ip[j+1]
ip[j+1] = ip[j]
ip[j] = temp2

for i in range(0,30):
os.system('nslookup %s'%ip[i])

得到结果,最后测试时,成功提交flag,提交格式:scan-42.security.ipip.net

image-20190729112507523

没仔细审题,后来发现是对西门子私有通信协议扫描最多的,应该直接提取扫描最多的ip,这样最终就容易判断flag了。

1.6.隐信道数据安全分析 [未解决]

题目:安全分析人员截获间谍发出的秘密邮件,该邮件只有一个mp3文件,安全人员怀疑间谍通过某种private的方式将信息传递出去,尝试分析该文件,获取藏在文件中的数据?

附件下载:1.6.隐信道数据安全分析

1.7.工业网络设备逆向 [未解决]

题目:这是一个工业系统中使用的路由器,系统的tddp协议存在远程代码执行漏洞。 请找出并分析tddp协议的执行过程,并回答以下问题 1.远程执行命令的消息类型为?(格式为CMD_???_???) 2.在tddp协议中第几个字节 = 什么时,可以控制发出远程执行命令的消息(FLAG格式为16进制)

附件下载:1.7.工业网络设备逆向

公告提示:

image-20190729113128914

1.8.二次设备固件逆向

题目:在对电力行业某二次设备进行渗透测试时,通过弱口令telnet服务获取了设备的权限,并提取出了设备固件文件,现在需要从固件中分析出其他默认硬编码密码或厂家后门口令。

附件下载:1.8.二次设备固件逆向

直接放到mac里搜索strings “pass” 命令如下

A954434307940E23D65F02AA0E280511

找到passWd后用ida打开找到

0A170A2C2652160258A9E50F92B18F22

得到弱口令:icspwd,flag提交格式:icspwd

这题是Snake做的,上面几题也帮我不少(逃。

1.9.组态工程逆向分析 [未解决]

题目:很多工业组态软件并未进行安全测试,存在很多安全隐患。请分析组态工程的文件,发现该工程的异常,并获取FLAG。

附件下载:1.9.组态工程逆向分析(未解决)

1.10.工业数据库安全分析 [未解决 ,未做]

题目:InSQL是世界上第一种面向工厂的高性能的实时关系型数据库。请分析数据库源文件,获取数据库中的异常,并找到FLAG。

附件下载:1.10.工业数据库安全分析(未解决)

## 1.11.工业网络渗透测试 [场景题,未做]

题目:通过VPN接入工业网络靶场场景中,探测发现工业管理网络中的Web应用,通过漏洞控制服务器权限,进而进一步针对工业网络进行渗透。远程VPN地址会通过系统消息发送,请留意。

公告消息:

image-20190729121207317

1.12.SCADA系统渗透测试 [场景题,未做]

题目:当你进入了企业管理网络,可以尝试进入生产管理网络,进而针对未进行安全防护的工业SCADA系统进行渗透测试。尝试发现SCADA系统并测试发现隐藏在系统服务中的Flag。需要通过VPN账号接入远程场景环境,并获取已经获取到访问生产管理网权限。

公告消息:

image-20190729121207317