Pentagon Announces Online Concert in November

Cube Entertainment released the official poster of 2020 PENTAGON ONLINE CONCERT WE L:VE on the afternoon of the 20th of October through Pentagon's official SNS channel and global fan site U CUBE.

In the released poster, Pentagon shows a warm atmosphere while leaning against each other against the backdrop of the Milky Way in the night sky where daisy petals flutter.

 Pentagon's online concert is an extension of the 10th mini album WE:TH released on the 12th, and is expected to meet the various aspects of the Pentagon under the keyword L:VE, which can be interpreted in various ways .

In particular, the Pentagon will present an unforgettable time to the global audience through special stages that can only be seen in this live concert performance.

WE L:VE will be broadcast live on November 29 at 3:00 p.m. KST, and tickets can be purchased from Interpark Tickets from 2:00 p.m. KST on the 26.

Pentagon is a South Korean multinational boy band formed by Cube Entertainment in 2016. The group consists of nine members: Jinho, Hui, Hongseok, Shinwon, Yeo One, Yan An, Yuto, Kino, and Wooseok. Originally composed of ten members, E'Dawn left the group and the record label on November 14, 2018. They were introduced through the Mnet survival show Pentagon Maker. Pentagon released their self-titled debut EP on October 10, 2016.

On October 12, 2020 Pentagon released their tenth extended play, WE:TH, as an eight-member group without the oldest member Jinho, who is completing his mandatory military service. The lead single, "Daisy," is an alternative rock song with a trendy yet intense sound, produced by Pentagon members Hui and Wooseok, and composer Nathan. The album consists of six songs, including "I'm Here," a self-composed solo song by Jinho.

Pentagon also held a showcase for releasing their 10th mini-album WE:TH at the Blue Square iMarket Hall in Hannam-dong, Yongsan-gu, Seoul, and revealed the new song stage. 

Tags
pentagon
Join the Discussion

Latest Photo Gallery

Real Time Analytics