No resumption of passenger flight operation in Maharashtra now: Uddhav Thackeray | BJP-TMC faceoff as Dilip Ghosh en-route to his constituency stopped by police | Bengal Guv urges people to remain calm, asks govt to act fast in restoring services | With four new positive cases Assam COVID-19 cases surge to 350 | Indian jawans briefly detained by Chinese forces in Ladakh last week: Reports |

SevenJackpots compare Indias most popular online casino, we love online gambling and are here to help Indian gamblers find the best casino sites with fastest withdrawal options.

Ads
Hardik Pandya picks up five wickets as India take 292 runs lead against England

Hardik Pandya picks up five wickets as India take 292 runs lead against England

India Blooms News Service | @indiablooms | 20 Aug 2018, 09:05 am

Nottingham, Aug 20 (IBNS):  Hardik Pandya picked up five wickets as he helped India bowl out England for 161 runs in their first innings and gave the visitors a chance to recover in the rollercoaster series on Sunday. 

Indian batsmen then extend the lead to 292 runs as the visitors ended the day's play at 129 runs for the loss of two wickets.

Shikhar Dhawan (44) and KL Rahul (36) made brilliant start to the innings but returned back to the pavilion before extending their knocks further.

Pujara (33*) and VIrat Kohli (8*) remained unbeaten till the end of the day's play.

India earlier lost four quick wickets to be bowled out in their first innings for 329 runs.

Virat Kohli remained the highest scorer for the side as he added 97 runs with his willow.

James Anderson, Stuart Broad and Woakes added three wickets for England.

India bowlers bowled brilliantly and Pandya picked up five wickets as India bowled out England for 161 runs.

Buttler remained the top scorer for the side with his 39 runs.

England are currently 2-0 ahead in the series. 

 

Image: Sachin Tendulkar Twitter page 

Hardik Pandya picks up five wickets as India take 292 runs lead against England

India Blooms News Service
Comments ()

Post your comment:

Web Analytics