通过Twitter 的地理位置标记和文本来了解印度金奈基础设施恢复能力的初步研究
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印度it产业的发展现状印度IT产业的发展现状印度IT产业是印度最重要的经济支柱之一,也是全球IT服务和软件开发的主要供应国之一。
以下是印度IT产业的发展现状:1.快速增长:印度IT产业在过去几十年里取得了快速增长。
自1990年代初以来,印度一直是全球IT服务和软件开发的中心之一。
根据印度IT和电子通信部的数据,印度IT和IT相关服务的产值在过去的几年里呈现出稳定增长的趋势。
2.国际领先地位:印度是全球IT服务和软件开发业的领先国家之一。
印度的IT公司拥有全球领先的技术专业知识,提供一系列的IT解决方案,包括软件开发、移动应用开发、数据分析和云计算等。
3.主要出口国:印度IT产业是印度的主要出口行业之一。
印度IT和IT相关服务的出口额在过去几年里一直呈现出稳定增长的趋势。
印度的IT服务和软件开发公司提供全球客户定制化的IT解决方案,帮助客户提高效率、降低成本和实现数字转型。
4.创新和研发:印度IT产业致力于创新和研发。
许多印度公司在新技术领域如人工智能、大数据、物联网和区块链等进行研究和创新。
印度也是许多国际科技公司在印度设立研发中心的首选地之一。
5.就业机会:印度IT产业为数以百万计的年轻人提供就业机会。
印度的IT公司雇佣了大量的软件工程师、系统分析师、数据科学家和网络工程师等。
据估计,印度的IT和IT相关服务行业为印度创造了数百万个工作岗位。
6.面临挑战:尽管印度IT产业取得了快速增长,但它仍然面临许多挑战。
其中包括技能短缺、高员工流动性、竞争激烈的国际市场和数据安全等问题。
印度的IT产业需要持续关注和投资,以提高技能水平,解决人才短缺问题,并应对日益复杂的全球市场竞争。
总体来说,印度IT产业在过去几十年里取得了快速增长,并在全球IT服务和软件开发领域占有重要地位。
它为印度带来了巨大的经济收入和就业机会,对印度经济的发展起到了积极作用。
然而,为了保持竞争优势并应对挑战,印度IT产业需要进一步加强技术创新、提高技能水平和促进可持续发展。
推特趋势国家推特是一种流行的社交媒体平台,让用户能够实时地分享消息、观点和趋势。
在推特上,人们可以追踪最新的新闻事件、明星动态,以及社会趋势。
不同的国家在推特上的趋势也是各不相同的。
下面我将介绍一些在推特上热门的国家趋势。
首先是美国。
作为推特的起源地,美国自然是一个在推特上极具影响力的国家。
在美国的推特趋势中,时事新闻和政治是最为热门的话题。
美国的政治环境紧张,各种政治事件和言论在推特上得到广泛的讨论和关注。
此外,娱乐明星和体育赛事也是美国推特用户关注的重点。
推特上的美国趋势反映了美国社会的多元化和热衷于时事政治的特点。
接下来是印度。
作为全球人口最多的国家之一,印度的推特用户数量庞大,他们的关注点也非常广泛。
在印度的推特趋势中,宗教、政治和社会问题都是热门话题。
印度社会存在着多种宗教和文化,因此宗教议题常常在推特上引发激烈的讨论和辩论。
政治问题也是印度推特用户关注的焦点,包括选举、政府政策和领导人的动态。
此外,社会问题如性别平等、教育和环境保护也在印度推特趋势中扮演重要角色。
另一个推特趋势国家是英国。
英国的推特用户对体育、音乐和时尚都非常热衷。
体育赛事如足球比赛和网球锦标赛经常成为英国推特用户的热门话题。
音乐也是英国推特用户关注的重点,包括音乐新闻、明星动态和音乐活动等。
时尚也是英国推特用户普遍关注的话题,时装周、时尚潮流和设计师动态都在英国推特趋势中占有一席之地。
最后是巴西。
作为拉丁美洲最大的经济体和人口最多的国家,巴西的推特用户数量庞大且活跃。
在巴西的推特趋势中,足球、娱乐和文化是最火热的话题。
巴西是足球王国,足球比赛和球队的动态在巴西推特上受到广泛的关注和讨论。
娱乐明星和电视节目也是巴西推特用户关注的重点。
巴西的文化如音乐、电影和文学也在推特趋势中扮演重要角色,反映了巴西文化的多样性和活力。
总之,不同国家在推特上的趋势各不相同,反映了不同国家社会的特点和关注点。
无论是政治、宗教、体育、娱乐还是文化,推特都提供了一个实时分享和讨论不同话题的平台。
印度硅谷地理书-概述说明以及解释1.引言1.1 概述印度硅谷,地理书是一部关于印度的重要城市班加罗尔(Bangalore)的地理特点和发展的书籍。
本书旨在介绍班加罗尔的地理位置和其在经济发展方面所取得的成就。
班加罗尔是印度卡纳塔克邦的首府,位于印度南部的德卡坡高原上,地理位置优越。
它的坐标为北纬1258′至1320′,东经7730′至7750′,位于德卡坡高原的东北部。
班加罗尔的地形多为平原,地势相对平坦,便于城市建设和发展。
同时,该城市也被众多山脉环绕,如尼尔吉里山脉、维达纳山和巴兰德尔山脉,为城市增添了自然美景。
除了得天独厚的地理位置,班加罗尔还因其优越的气候条件而闻名。
该地气候温和,四季分明,夏季相对凉爽,冬季较为温暖。
由于海拔较高,班加罗尔常年气温适中,很少出现极端高温或低温天气,使其成为印度的宜居城市之一。
班加罗尔在过去几十年中迅速崛起为印度的科技和创新中心,被誉为印度硅谷。
该市拥有世界顶级的科技企业和研究机构,吸引了大量的科技人才和投资。
这是得益于城市政府的积极引导和创新政策的支持,以及卓越的教育体系和人才资源的存在。
班加罗尔还拥有印度最大的IT园区——电子城,集聚了众多国内外知名企业,形成了独特的科技生态系统。
本书的目的就是希望通过对于班加罗尔的全面介绍,展示出这个城市的独特魅力和发展潜力。
我们将详细探讨班加罗尔的地理位置、城市的建设与规划、科技产业的发展以及对经济和社会的影响。
同时,我们也将展望班加罗尔未来的发展趋势,希望能够为读者提供有关印度硅谷这一新兴城市的全面了解。
1.2文章结构1.2 文章结构本文将按照以下几个部分来展开对印度硅谷的介绍和分析:1. 引言:在这一部分,将对印度硅谷的概述进行阐述,并说明本文的目的和意义。
2. 地理位置:这一部分将详细探讨印度硅谷的地理位置,包括其所处的州、城市和具体的地理特征。
我们将介绍印度硅谷所在地的气候、地形和环境,以及对其地理位置的影响。
印度高新技术的发展现状及未来趋势分析概述高新技术是现代经济的重要组成部分,对于国家的经济增长和竞争力的提升起着至关重要的作用。
印度作为全球第二人口最多的国家,一直以来都在努力推动高新技术的发展,以实现经济转型和提升人民生活水平的目标。
本文将对印度高新技术的发展现状以及未来的趋势进行分析和展望。
一、印度高新技术的发展现状近年来,印度高新技术的发展取得了一定的进展。
以下是印度高新技术领域的一些亮点和成就:1. 信息技术业印度在信息技术领域表现出色,特别是在软件开发和IT服务方面。
印度的软件开发人员数量庞大,技术水平较高,许多跨国公司选择在印度建立研发中心或外包业务。
成千上万的印度工程师参与了全球各种IT项目,为印度带来了大量的外汇收入。
2. 生物技术印度在生物技术领域也取得了一些成就。
该国的科学家们在医药、农业和环境保护等领域进行了许多研究,并取得了一些突破。
印度的生物技术公司也在全球市场上蓬勃发展,为印度经济做出了贡献。
3. 新能源印度正在加大对新能源的研究和开发力度。
该国拥有丰富的太阳能资源,并致力于开发太阳能发电技术。
此外,印度还在风能、生物质能源和地热能等领域进行了一些研究,以减少对传统能源的依赖。
二、印度高新技术的未来趋势尽管印度在高新技术领域取得了一些成就,但仍面临一些挑战。
以下是印度高新技术未来发展的一些趋势和机遇:1. 人力资源优势印度是一个人口众多的国家,拥有大量的年轻人才。
这为印度在高新技术领域的发展提供了独特的机会。
政府应该加大投资力度,提高教育质量,培养更多的高技能人才,以满足市场需求。
2. 创新和研发印度需要加强创新和研发能力,推动科技创新。
政府可以通过提供更多的研究资金和税收优惠政策来鼓励企业进行创新。
同时,加强学术界与产业界的合作,促进知识和技术的转化,推动印度高新技术的发展。
3. 数字经济随着互联网的普及和移动支付的发展,印度的数字经济正迅速增长。
更多的人通过手机和互联网接入信息,这为在线教育、电子商务和智能城市等领域提供了巨大机遇。
神秘之旅畅游印度的金奈印度,这个充满了神秘色彩的国度,拥有着丰富的文化遗产和绚丽多彩的自然风光。
而印度的金奈(Chennai),作为印度南部的重要城市,是一个极富魅力的旅游目的地。
在这里,你将迎接着热情的当地人民、美味的当地美食以及壮观的古迹和庙宇。
本文将带你一同探索神秘之旅,畅游印度的金奈。
一、欢迎来到金奈金奈,又叫马德拉斯(Madras),是印度泰米尔纳德邦的首府,位于孟买以南的科林巴托尔湾的边缘。
作为南印度的商业中心和港口城市,金奈拥有非常悠久的历史背景和各种文化底蕴。
首先,您将受到金奈的热情欢迎,不仅可以品尝到正宗的南印度美食,还可以感受到悠久的文化和传统。
二、浸泡在历史古迹中的旅行在金奈,您将有机会参观到许多古老的历史遗迹。
其中最著名的要数瓦斯塔努科伊寺(Kapaleeshwarar Temple)。
这座建于7世纪的寺庙是金奈最重要的朝圣地之一,也被认为是泰米尔纳德邦最具代表性的寺庙之一。
寺庙的建筑风格独特,充满了南印度的色彩和细节。
除了瓦斯塔努科伊寺,您还可以游览到圣托马斯教堂(San Thome Cathedral),这座白色尖塔屹立在市区的海滨上,是圣托马斯的安息地。
步入教堂内部,您将被宁静祥和的氛围所包围。
三、品味南印度美食的独特魅力金奈以其独特的南印度美食而闻名。
您可以品尝到各种香辣的咖喱、印度馕、煎饼等。
金奈最具特色的美食之一是“噪音鸡蛋”,这是一道以鸡蛋为主食的传统南印度菜肴,口感独特而美味。
如果您想要品尝正宗的南印度素食,推荐去一家叫做“Saravana Bhavan”的餐厅。
这是一家专门提供素食的连锁餐厅,菜单上有各种南印度特色,口味鲜美,物美价廉。
四、远离喧嚣,感受大自然的美妙在金奈附近,您还可以找到一些宁静的自然胜地,远离城市的喧嚣。
其中最有名的要数马哈巴利普兰(Mahabalipuram)。
这是一个被联合国教科文组织列为世界遗产的地方,拥有悠久的历史和壮丽的岸线。
2021《5G行业知识竞赛》题库(试题99道含答案)1. 下列物联网技术中可以支持语音的无线技术是哪个?()eMTC(正确答案) SigFox Lora NB-IOT 2. 提供面向公众的无线资源,通过 QoS、切片等手段,实现业务隔离,满足客户对特定网络速率、时延及可靠性的优先保障需求的5G 专网模式为()A.优享模式(正确答案)B.专享模式C.多享模式D.尊享模式 3. 999%(正确答案) 99% 4. 目前低频 5G 带宽是()MHz 100(正确答案) 20 50 200 5. 中移 NR2.6G 采用 5ms 单周期的帧结构,主要是为了:增强上行覆盖增强上行容量增强下行容量(正确答案) 与 TD-LTE 同步,避免异系统干扰 6. 车联网的可靠性是多少?7. 对于 eMMB 场景,协议要求的时延要求是是小于()1ms 3ms 4ms(正确答案) 10ms 8. 5G 的频段,高频段指的是()3GHz 以上6GHz 以上(正确答案) 10GHz 以上30GHz 以上 9. 移动互联网和()是 5G 发展的主要驱动力。
云物联网(正确答案) 流量经营语音视频 B 10.5G2.5ms 双周期帧结构支持的最大广播波束为()个 24 7(正确答案) 8 11.5G 使用的信道编码方式是?GGMSK PNCode QAM Polar(正确答案) 12.5G 网络相比 4G 网络最大的区别是什么?价格贵速度快(正确答案) 更省电价格便宜 B 13.中国移动一直是 5G 标准的积极推动者和实践者,从 2016 年开始布局,预计()年可以开通实验网。
2016(正确答案) 2011 2018 2017 14.5G 组网功能元素以下哪项是不正确的?中心级汇集级拓展级(正确答案) 接入级 15.5G 的应用场景可分为几大类? 3(正确答案) 2 1 5 16.工信部日前确定了国内 5G 商用的频段的时间是? 2017 年 6 月 6 日 2017 年 9 月 15 日2017 年 11 月 15 日(正确答案) 2017 年 12 月 15 日 17.我国提出的“5G 之花”关键性能中,未被 ITU 接受的是()用户体验速率流量密度能效成本效率(正确答案) 18.5G 5G(正确答案) 19.9G LTE-A 20.5G 网络使用的信道编码方式是()。
神奇的金奈南印度的现代化城市金奈南印度的现代化城市,金奈是印度南部的一个重要城市,也是泰米尔纳德邦的首府。
这座城市以其壮丽的历史遗迹、宏伟的建筑、热情的人民和独特的文化而闻名于世。
现代化的金奈融合了传统和现代的元素,为游客提供了丰富多样的体验。
本文将带您探索这座神奇城市的魅力。
一、历史与文化金奈自公元前2世纪起就有人类居住,它是一个拥有悠久历史的城市。
在过去的几个世纪里,金奈经历了多个王朝的统治,包括波罗王朝、查拉王朝和鲁比尼王朝等。
这些王朝留下了许多令人叹为观止的宫殿、寺庙和堡垒,成为了城市的瑰宝。
金奈以其宏伟的寺庙而闻名于世。
曾经是查拉王朝的首都,印度最富饶的寺庙区之一,金奈的巴拉吉庙是维尼先生的主要地标。
这座寺庙以其独特的建筑风格和雕塑而吸引了众多游客。
此外,还有印度最大的印度教庙宇——凯亚拉尼斯瓦拉寺庙,它是金奈最重要的宗教场所之一。
二、现代化的城市尽管金奈拥有丰富的历史遗迹,但它也迅速发展成为一个现代化的城市。
金奈是印度南部最重要的商业和金融中心之一,吸引了许多国内外企业和投资。
拥有现代化的基础设施,如现代化的机场、高速公路和地铁系统,金奈为居民和游客提供了便利的交通和通讯。
金奈还以其科技产业而闻名。
这座城市拥有许多大型科技园区和IT公司,如泰达科技园和希根尼斯科技园。
这些科技园区是印度最先进的技术中心之一,吸引了许多高科技企业和专业人才。
金奈的科技产业也为城市带来了繁荣和发展。
三、美食与购物金奈是美食的天堂,这里有各种各样的美食选择,从传统的泰米尔美食到国际化的料理。
泰米尔纳德邦的传统餐厅提供当地特色菜肴,如达赖和班等。
此外,金奈还有许多国际餐厅和咖啡馆,为游客提供了更多选择。
除了美食,金奈还是一个购物的天堂。
这座城市拥有许多购物中心、百货公司和传统市场,如马林海滨市场和坎耶品牌店。
游客可以购买到各种商品,包括纺织品、珠宝、手工艺品和当地特色产品。
无论您是购买纪念品还是品尝当地美食,金奈都提供了丰富的选择。
印度的交通基础设施与交通问题印度作为世界上人口第二多的国家,交通问题一直是其面临的一大挑战。
印度的交通基础设施落后,交通拥堵、道路状况差等问题给人们带来了许多不便。
本文将就印度的交通基础设施现状和面临的交通问题展开讨论。
一、交通基础设施现状印度的交通基础设施相对滞后,主要表现在以下几个方面。
首先,公路网建设不足。
尽管印度是面积第七大的国家,但其公路总里程却相对较少。
公路密度低、公路质量差、道路通行能力不足等问题不仅制约了印度的经济发展,也使得人们在出行中经常受到阻碍。
其次,铁路发展不均衡。
尽管印度的铁路系统是亚洲最大的之一,但是其在区域分布上存在着明显的不均衡。
印度东部和北部的铁路密度相对较高,而西部和南部地区的铁路发展相对滞后。
这导致了交通运输的不便和不平衡。
另外,城市轨道交通的建设相对滞后。
印度的城市化进程加速,大城市的交通问题愈发突出。
然而,相对于其他大城市,印度城市的轨道交通系统覆盖率较低,无法满足人们日益增长的出行需求。
二、交通问题与挑战印度交通基础设施的滞后给印度人民带来了一系列的交通问题与挑战。
首先,交通拥堵严重。
由于道路狭窄、车辆多、公共交通不便利等原因,印度的交通拥堵问题普遍存在。
尤其是在大城市的交通高峰期,交通拥堵对人们的出行影响很大,也严重影响了城市的交通效率。
其次,道路安全形势严峻。
印度的交通事故率居高不下,路面交通安全成为人们关注的焦点。
缺乏行人天桥、过马路设施不完善、交通法规执行不严格等问题使得印度的交通安全形势严峻,给行人和驾驶员的生命安全带来了潜在风险。
另外,交通环境污染严重。
印度是世界上污染程度最严重的国家之一,而交通运输是其中的一个主要原因。
排放标准不达标、车辆尾气排放控制不力等问题导致空气质量下降,对居民的身体健康产生了负面影响。
三、解决交通问题的对策为了改善印度的交通基础设施和应对交通问题,政府和社会各界应采取以下对策。
首先,加大基础设施建设力度。
政府应加大投资力度,加快公路、铁路等交通基础设施的建设,提高道路质量,增加交通通行能力,以满足人们日益增长的出行需求。
班加罗尔印度硅谷班加罗尔,作为印度的科技中心,被誉为“印度硅谷”。
它位于印度南部的卡纳塔克邦,是全球最大的IT专业人员聚集地之一。
在过去几十年中,班加罗尔经历了快速的技术和经济发展,成为印度和全球科技产业的重要中心。
班加罗尔的科技发展起源于20世纪70年代,当时美国科技巨头IBM在该地建立了一个大型研发中心。
这个中心吸引了许多年轻的印度工程师和科学家,他们在IBM的指导下进行了创新研究。
这个中心的建立标志着班加罗尔作为科技中心的起点。
在随后的几十年里,班加罗尔逐渐成为印度科技产业的中心。
许多国内外科技公司纷纷在这里设立了分支机构和研发中心,为班加罗尔带来了大量的技术和就业机会。
同时,班加罗尔的技术教育也得到了极大的发展,吸引了无数的学生和专业人才前来学习和工作。
班加罗尔硅谷的发展也受益于印度政府的政策支持。
政府采取了一系列的措施,鼓励科技公司在班加罗尔设立业务,并提供了税收优惠和其他奖励措施。
这些政策为班加罗尔的科技产业创造了良好的环境和条件。
今天,班加罗尔已经成为印度最重要的科技城市之一。
它吸引了来自世界各地的科技公司和专业人才,形成了一个充满活力和创新的科技生态系统。
许多科技创业公司在这里落地生根,并取得了巨大的成功。
班加罗尔的科技产值和就业率也得到了快速增长,为印度经济的发展作出了重要贡献。
然而,班加罗尔也面临一些挑战。
城市的基础设施和交通状况亟需改善,以满足不断增长的科技人才和公司的需求。
同时,班加罗尔也需要解决人才流失的问题,吸引更多的年轻人留在这里工作和创业。
总的来说,班加罗尔作为印度硅谷,在科技和经济方面取得了巨大的成就。
它不仅是印度科技产业的重要中心,也是全球科技创新的重要一环。
随着印度经济的持续增长和科技行业的不断发展,班加罗尔硅谷的未来将更加充满活力和机遇。
ResearchSustainable Infrastructure—ArticleUnderstanding Infrastructure Resiliency in Chennai,India Using Twitter’s Geotags and Texts:A PreliminaryStudyWai K.Chong a,⇑,Hariharan Naganathan b,Huan Liu c,Samuel Ariaratnam a,Joonhoon Kim da Del E.Webb School of Construction,School of Sustainable Engineering and the Built Environment,Arizona State University,Tempe,AZ85281,USAb Department of Technology and Construction Management,Missouri State University,Springfield,MO65897,USAc School of Computing,Informatics and Decision Science Engineering,Arizona State University,Tempe,AZ85287,USAd Department of Civil Engineering,Construction Management Technology,Oklahoma State University,Stillwater,OK74078,USAa r t i c l e i n f oArticle history:Received1November2017 Revised1December2017 Accepted6January2018 Available online7April2018Keywords:Social mediaFloodingEngineering design a b s t r a c tGeotagging is the process of labeling data and information with geographical identification metadata,and text mining refers to the process of deriving information from text through data analytics.Geotagging and text mining are used to mine rich sources of social media data,such as video,website,text,and Quick Response(QR)code.They have been frequently used to model consumer behaviors and market trends.This study uses both techniques to understand the resilience of infrastructure in Chennai,India using data mined from the2015flood.This paper presents a conceptual study on the potential use of social media(Twitter in this case)to better understand infrastructure ing feature-extraction techniques,the research team extracted Twitter data from tweets generated by the Chennai population during theflood.First,this study shows that these techniques are useful in identifying loca-tions,defects,and failure intensities of infrastructure using the location metadata from geotags,words containing the locations,and the frequencies of tweets from each location.However,more efforts are needed to better utilize the texts generated from the tweets,including a better understanding of the cul-tural contexts of the words used in the tweets,the contexts of the words used to describe the incidents, and the least frequently used words.Ó2018THE AUTHORS.Published by Elsevier LTD on behalf of Chinese Academy of Engineering and Higher Education Press Limited Company.This is an open access article under the CC BY-NC-ND license1.The use of social media and research needsResilience is human-centric and is constitutive of the interac-tions between society,culture,humans and their community, and the environment[1].Infrastructure resilience is intimately tied to the community it serves since the community’s attitudes and responses toward system disruptions frame the resilience dis-course[2].The Presidential Policy Directive21(PPD21)defined resilience as‘‘the ability to prepare for and adapt to changing con-ditions and withstand and recover rapidly from disruptions.Resili-ence includes the ability to withstand and recover from deliberate attacks,accidents,or naturally occurring threats or incidents.”These definitions highlight the interactions between infrastructure, community,and hazards—that is,the recovery of both infrastruc-ture and community from disasters[3].Infrastructure resilience impacts a community;however,the community helps to define the requirements and standards for local infrastructure.One of the responsibilities of infrastructure stakeholders is to determine the resilience and sustainability of the infrastructure within a com-munity.Although there are various tools that are relied upon, social media offers the platform described here to help determine the regional/local resiliency and sustainability of infrastructure.Social media data mining is an emerging technique that offers the potential to connect community and infrastructure resilience with disasters.It comes in different formats and provides extensive structure to link social interactions with an extensive collaborative and decentralized community network.Social media turns content consumers into content producers.The contents of users’locations, interactions between individuals within their community and with the broader world(expression and written words),and users’time at different locations can be used to derive critical information[4].Social media has performed pivotal roles in managing pre-disaster evacuations,reducing the impacts of disasters,coordinat-ing disaster recovery,and documenting lessons learned—examples include the recovery effort in Joplin,Missouri after the2014⇑Corresponding author.E-mail address:ochong@(W.K.Chong).Engineering4(2018)218–223 Contents lists available at ScienceDirectEngineeringtornadoes[5],and the use of social media to raise funds for Haiti earthquake recovery[6].Prior research has demonstrated the use of social media in disaster management[7–11].While social media is fast becoming an important avenue to connect people with soci-ety and technology,its potential has yet to be fully explored.As the amount of social media content grows,the role of social media has become increasingly important.Social media potentially offers a platform to model a community’s perceptions on the resilience of infrastructure to disasters.2.Research objectives and questionsThe purpose of this paper is to understand the use of social media to connect a community with infrastructure resilience.Due to the scale of the research,the team only used Twitter data from the2015Chennaifling texts and geotags collected from individual tweets,the research team studied the following:①iden-tifying the locations of affected infrastructure,②understanding the seriousness of failures,and③understanding how information could be used to interpret infrastructure resilience,using only social media data.This research attempts to improve the under-standing of how social media can be used to model community and infrastructure resilience.This paper also discusses and analyzes the connection between community resilience and infrastructure interconnectivity and performance using social media data mining and geotagging,paying particular attention to the language and verbiage used by the communities and to how a community’s cul-ture affects the contexts in which language and verbiage are used. The following will introduce the interaction between different social media data.This paper uses data from the tweets sent by Chennai’s Twitter users during the2015Chennaiflood.This research uses data gen-erated by Twitter;each tweet consists of144characters and a Twitter ID.Each tweet contains a set of textual data,account infor-mation associated with the text,geospatial data,and time tags that are publicly available.More information is available on other types of social media,such as Facebook,but that is private information and is not available to the public.2.1.Geotagging and time tagsGeotagging is the process of integrating geographical identifica-tion metadata into social media data(e.g.,photographs,videos, text messages,websites,Quick Response(QR)codes,Rich Site Summary(RSS)feeds,etc.).Each data item is assigned a unique geospatial identity,such as the location(s),sender’s information, latitude and longitude coordinates,bearing,distance,accuracy, place name,and time tag.The tagging may be performed manually by the user,or automatically by an electronic device(i.e.,servers, WiFi,and/or a cellphone network).2.2.Text dataText mining,also known as text analytics,refers to the process of analyzing text information to derive high-quality information. The mining process involves structuring text input,deriving lin-guistic features,removing and/or inserting features,deriving pat-terns within structured data,and evaluating and interpreting the outputs.Text mining includes text categorization,clustering,entity extraction,the production of granular taxonomies,sentiment anal-ysis,and entity relational modeling.Texts provide insight into how people understand and communicate with each other and about the subject matter.3.Background of the ChennaifloodThe annual monsoon in Chennai,India,alwaysfloods the city and disrupts its population and economy.Theflood has tradition-ally been made worse by an incapable and corrupt local govern-ment.The historical annual occurrences of the cyclones in Chennai have never been as devastating as the recent ones.The first documented cyclone occurred in1903,when the population was60%lower than it is today[12].Thefirst recorded devastating cyclone that passed through Chennai occurred in1918.The1943 cyclone completely devastated the city and destroyed the city’s transportation infrastructure[13].The historical1985flood was the largestflood ever in Chennai,but the2015Chennaiflood was nearly as bad.A torrential rain in2015caused by a deep depression over the Bay of Bengal disrupted life in Chennai and northern Tamil Nadu state[14].Jesuraj et al.[12]conducted a mathematical anal-ysis to evaluate the impact of the2015Chennaiflood and discov-ered that it affected53%of the regional environment,25%of the agriculture,and15%of the regional health.Theflood also polluted critical water infrastructure,groundwater,and river water due to leaks from chemical and power plants[12].Chennai received more than100inches(1inch=2.54cm)of rainfall during the2015monsoon season;added to the city’s years of illegal development and inadequateflood preparedness,the 2015Chennaiflood caused more damage than prior cyclones,even though it was slightly smaller than the one in1985.Chennai offi-cials reported that at least57000homes in the city suffered from structural damage.Due to rainfall in the Tirunelveli District,all of the local dams were breached by7December2015,forcing the local authorities to discharge excess water from the reservoirs into the river.As a result,water from the riverflowed into the dry areas [12].The Southern Railway canceled major train services,and Chennai International Airport was closed after6December2015 [15].The number of fatalities increased at hospitals that did not have power or oxygen supplies,while the lack of coordinated relief response in North Chennai forced thousands of residents to evacu-ate out of the city on their own[12].Without government help,the local population had to rely on itself during theflood and the after-math of the recovery.Chennai’s local population had always been resilient againstfloods,and had always taken the initiative to assist in rescue and recovery efforts.Erroneous and ill-informed deci-sions made by the authorities had always increased local resilience against natural disasters.The lack of planning to expand theflood-containment facility,the lack of communication between the gov-ernment and the local population,and the lack of communication between interconnected infrastructure(e.g.,cellphone towers and roads)slowed down the recovery efforts.4.Social media selectionPrior investigation revealed that an extensive amount of rele-vant information was available from various social media sources, including information on the use of social media data to under-stand community responses to climate change[16],potential solu-tions to improve infrastructure resilience toflooding[17–19],and information on the use of comments from news media to study the seriousness of theflood[20–25].However,such information remained largely unexplored.Although social media was used by the relief teams and military aiding Chennai during the disaster recovery,the bulk of social media postings came from Chennai res-idents.Social media became a powerful tool throughout the disas-ter,as it was used to reach out to the affected residents,and served as an important emergency communication tool.Chennai was badly hit when rivers and lakes breached their banks and submerged many areas(water was as high as the secondW.K.Chong et al./Engineering4(2018)218–223219level of many buildings)(Fig.1)[26].Theflood cut off power in many parts of the city,and many cellphone towers were deprived of power[26].Facebook,Twitter,and WhatsApp were the most fre-quently used social media platforms during theflood.These media platforms helped the residents to update the current status of their towns and regions,and allowed them to communicate[26].Differ-ent social media platforms provided different types of information. Facebook was used as the messenger of the relief team to reach out to emergency locations,Twitter hashtags were used to locate food and resources for the residents,and both were used to help raise money for the residents.WhatsApp served as a direct telephone communication tool,as landlines were disrupted.Facebook came up with aflood safety check to update residents on the latest pro-gress of the disaster.As a result,Twitter(through#Chennai rains,#Chennai volun-teer,#Chennai rescue,and#Chennai rains help trending)and Face-book were the two most important platforms during the entire disaster period[12,13].However,data from Facebook are less accessible,and Twitter provides its application programming inter-faces(APIs)for data collection by users,albeit to a limited degree; therefore,the research team decided to rely only on Twitter.5.Study and analysis methodologiesCurrent data analytical techniques are mostly numeric based. They do not handle texts and geospatial metadata effectively,as texts and geospatial metadata require different analytical tech-niques.The quantity of words used is not the only important piece of information.Most text-mining software is numeric based.As a result,the research team integrated existing text-mining software with a manual data-mining approach to analyze both the texts and the metadata.The research team conducted the following tasks:①They analyzed and discovered the themes and sub-themes of the texts and metadata,②they reduced and selected a number of themes and sub-themes that were important to the research objective,③they built hierarchies of themes or code books related to the objective,and④they linked these themes to the concepts.Social media data contain geospatial metadata that can be used to determine the tweets’locations.Geospatial metadata can also be tagged and connected between individuals to form a network of individuals.A network of individuals from the same community or neighborhood will then form a network of metadata and texts that are then connected to a network of infrastructure affecting the community.The geospatial metadata and texts sent from social media contain time tags that provide information on the space where,and the time when,the neighborhood and community interacted with the infrastructure.The research team collected tweets posted during the recent floods in Chennai using the Twitter Streaming API for analysis.The team selected a subset of tweets that contained geotag meta-data,and the metadata was used to map the tweets’locations.The locations were then illustrated on a Google Map.The tweets were grouped by infrastructure issues and types of issues that the city suffered from,particularly for roads,electricity,dams,and the tele-phone network.The tweets arefiltered by the keywords from each tweet.Fig.2[26]displays the locations from where Twitter users posted on infrastructure ing the above feature-extraction techniques,data from Twitter were extracted and used to develop Figs.3y and4.6.Preliminary analysis6.1.Time and location impacts due to lack of power:LimitationsOver70%of the tweets were sent from Chennai’s city center. The locations shown in Fig.3(a)identify the locations of the cell-phone towers where the tweets were received and then sent.Thus, these are not the exact locations of the incidents or of where the tweets were sent.The exact locations of the incidents and the infrastructure related to the incidents had to be estimated from the words used in the tweets.For example,tweets about the breach of the local dam were mostly sent from cellphone towers that were over20km from the dam.The exact locations had to be derived from both the geotags and the words used in the tweets. The geospatial metadata did not contain sufficient information on the locations,the incidents,or issues with regard to the locations.6.2.Impacts due to power shortages and locational resiliencyPower was unavailable in some parts of Chennai;as a result, some of the cellphone towers were not operational.Cellphone sig-nals were picked up from the other operating cellphone towers,so the towers that were still operational sent out the signals from the tweets instead.Although this situation complicated the process of identifying the exact locations where the tweets were sent,it offers insights into the operations of cellphone towers and power supply at different locations.The locations where cellphone towers were still in operation were more resilient toflooding than the locations where cellphone towers were down.6.3.Time delaysDuring theflood,the transmissions of tweets were always delayed.When too much information reaches a cellphone tower, the processing time of the information and signals will increase. Many Twitter users had to wait for power to return,charge their phones,or search for cellphone signals;thus,their tweets were always delayed.As many as95%of the tweets were delayed as a result,so the exact timings of the tweets were unknown.The delays were assumed to range from as low as a few seconds to as high as a day.Thus,time tags were not reliable information as they did not reflect the actual time when an incident or event happened.6.4.Locations,events,and issues—their density relationshipFig.3(a)displays the locations from where the tweets were sent with regard to potential infrastructure-related events or incidents. The tweets werefiltered using keywords related to the respective infrastructure issues taken from the text in the tweets.Fig.3(a) shows that the tweets were mostly about the road conditions in the city center,and were mostly sent from within the city limit. Although many roads,powerlines,and houses outside of thecity Fig.1.Chennai after the rain[26].y The maps are provided by the author and are granted by www.mapsofi. 220W.K.Chong et al./Engineering4(2018)218–223limits were also submerged in water (as shown in Fig.3(b)),very few tweets reported on them.Fig.3(b)shows the areas affected by the flood.The box areas in Fig.3(a)and (b)exhibit the rough city limit of Chennai.Over 70%of the tweets were sent out from the cellphone towers within the city paring Fig.3(a)with (b)shows that the cellphone towers affected by the flood were still in operation inside and outside of the city limit.From the map,we concluded that tweets were mostly sent from within the city limit due to the high population density where aid was urgently needed.Over 10%of the tweets were sent out from cellphone towers that were not affected by the flood in the north.The hardest-hit area was in the Ganga Nagar area,as the map confirmed.None of the cell towers in that area were operational,as there was no power supply in the area.We concluded the following from both maps:①The locations where the cellphone towers were still in operation might be more resili-ent against flood than the locations where they were not in opera-tion,②Chennai’s city center might require more efforts to build resiliency than the areas outside of the city center,and ③the demand for resilience is greater in areas with high population den-sity than in areas with lower population density.The maps indicate that there were very few tweets in the less-populated areas than in the heavily populated areas,even when both densely and sparsely populated areas were affected by the flood.6.5.Time delays of tweetsInsufficient data were available on the tweets’time delays.Through interviews with some local Chennai residents (contacts obtained through one of the investigators),we concluded that the delays ranged from a few seconds to a day.The interviews also revealed that excessive traffic on the cellphone towers,the need to locate cellphone signals,and waiting for power to return were the three main causes of tweet delays.However,we were unable to determine any relationships between locations,texts,and time tags.6.6.Text analyticsThe primary words or text used in the tweets with regard to infrastructure were compiled using TagCrowd Ò.The analysis focused on keywords related to infrastructure (e.g.,commute,route,and safe);for example,keywords related to road issues are shown in Fig.4.The font of each word in Fig.4is directly propor-tional to the frequency of the word appearing in the tweets.TheFig.2.The role of social media in the 2015Chennai floods [26].Pictures show (a)a tweet sent out during the flood,(b)private label used by flood rescue volunteers,(c)weather map showing the torrential rain,and (d)floodareas.Fig.3.(a)Aerial mapping of tweets and (b)Aerial mapping of the flood.W.K.Chong et al./Engineering 4(2018)218–223221word ‘‘log”or ‘‘logged”was the most frequently used noun,and was used to refer to flooding or to being stuck in the flood in a local con-text (i.e.,road logging,waterlog,or waterlogged).‘‘Log”or ‘‘logging”can be used to describe the flooding situation in the local context.In addition,the names of specific roads and towns were fre-quently used (i.e.,proper nouns such as Kilpauk,Tambaram,and Velachery West).Many nouns were used before the names of the road or town to describe the failure or defect suffered by the road or town.However,the nouns used to describe the failure or defect were extremely diverse and did not reach the frequently used words list in Fig.4.These nouns include words such as cracks,pops,holes,and lines.There were some conclusions that we found useful:(1)The words used in the tweets reflect the conditions of both the infrastructure and the residents rather than the conditions of the infrastructure alone.For example,‘‘flood”and ‘‘stretch”were frequently used together to reflect the conditions of the residents and the infrastructure at the same time—that is,how the stretch of flood affected both the roads and the residents,and not just the road conditions.Nouns were used to describe the failures found on the roads;however,the nouns were more useful to describe the situations of the residents,and only vaguely commu-nicated the conditions of the roads.Even when the tweets were about road conditions,the words used did not accurately describe the road conditions in a way that was useful to the road engineers.Even though a bridge near Chinmayi Choolaimedu neighborhood was found to be structurally unsound,the words used to describe the bridge’s condition did not clearly indicate the structural unsoundness.The tweets did not mention the exact location of the unsound bridge,even though there were five bridges in the city and only one was unsound.(2)The phrase ‘‘open parts”was frequently used in the tweets.We further analyzed the contexts and intentions of its use,and dis-covered that this phrase was used to describe different road condi-tions in different towns within the Chennai city limit.Some of the roads were described as having ‘‘open parts”even though they were structurally sound,whereas others described in this way were seriously damaged.We conclude from this analysis that the judgments of the tweets’senders vary significantly.Although ‘‘open parts”indicates a potential road defect,the condition of the defect was not appropriately described by the words.(3)We found no correlations between the frequently used words and the locations.However,there were correlations between the frequently used words and words used to describe the towns.We also found that some of the words that were used to describe the road conditions and the situations facing the resi-dents correlated with one another.We conclude that more analy-ses and more powerful tools are needed to identify and acknowledge the lesser-used words that describe road conditions,and to understand the context of the vocabulary usage in Chennai and in India in general.7.Connecting social media data with resilienceThe preliminary analyses showed that social media data,including texts and geotags,offer the potential to determine theresilience of infrastructure and community.The results can be used to identify locations that are more resilient for cellphone towers and powerlines in the event of flooding.Such locations can also be used to locate critical infrastructure,like emergency storage,that require an increased level of resiliency.The text from the tweets offers additional information on the exact locations of affected areas,although more research is needed to improve the interpretation of words that are less frequently used,and of differ-ent words that may have the same meanings in the context of a certain culture.Such research should include:(1)A comprehensive understanding of the regional cultures and languages regarding the relationships between vocabularies,the meanings of words,and the contexts with which words are used;(2)An analytic approach for less frequently used words.While frequently used words provide extensive information on the loca-tions of events and incidents,the less frequently used words pro-vide more details about the events and incidents.The total number of times a word is used can only help to identify the loca-tion of the affected area,and thus of the non-resilient area.How-ever,many other nouns were used to describe events,although they were not consistent due to the lack of knowledge of the par-ticular issue.The study found that multiple words were used to describe the same defect.Thus,words that have parallel meanings and are used in the same context could be analyzed together;and (3)Time tags are not useful information to understand resili-ence at this point,and further treatment of time tags is needed to make them more useful.Prior study showed that time tags could be used to determine the distances between the reporting loca-tions of an issue,and thus might offer insight into the seriousness and exact location of the issue.8.ConclusionsThe purpose of this paper was to understand whether geotag-ging and text mining can serve as a platform for governments and private citizens to understand and model community and infrastructure resilience.This preliminary study highlighted the potential of both techniques:Geotagging identified the failure locations,and text mining refined the locations and suggested the types of failure.The analysis also highlighted the potential of using such techniques to understand the impacts of a flood on the regional environment and rmation on the power supply and road conditions was identified from tweets and hash-tags.The study also concluded that research is needed to under-stand the use of the less frequently used words.Compliance with ethics guidelinesWai K Chong,Hariharan Naganathan,Huan Liu,Samuel Ariarat-nam,and Joonhoon Kim declare that they have no conflict of inter-est or financial conflicts to 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