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Bonk on ETH price

Bonk on ETH presyoBONK

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PHP
Kinukuha ang data mula sa mga third-party na provider. Ang pahinang ito at ang impormasyong ibinigay ay hindi nag-eendorso ng anumang partikular na cryptocurrency. Gustong i-trade ang mga nakalistang barya?  Click here

Ano ang nararamdaman mo tungkol sa Bonk on ETH ngayon?

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Tandaan: Ang impormasyong ito ay para sa sanggunian lamang.

Presyo ng Bonk on ETH ngayon

Ang live na presyo ng Bonk on ETH ay ₱0.{7}3033 bawat (BONK / PHP) ngayon na may kasalukuyang market cap na ₱0.00 PHP. Ang 24 na oras na dami ng trading ay ₱0.00 PHP. Ang presyong BONK hanggang PHP ay ina-update sa real time. Ang Bonk on ETH ay -1.49% sa nakalipas na 24 na oras. Mayroon itong umiikot na supply ng 0 .

Ano ang pinakamataas na presyo ng BONK?

Ang BONK ay may all-time high (ATH) na ₱0.{5}3374, na naitala noong 2024-05-11.

Ano ang pinakamababang presyo ng BONK?

Ang BONK ay may all-time low (ATL) na ₱0.{7}2971, na naitala noong 2025-03-30.
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Ano ang magiging presyo ng BONK sa 2026?

Batay sa makasaysayang modelo ng hula sa pagganap ng presyo ni BONK, ang presyo ng BONK ay inaasahang aabot sa ₱0.{7}3969 sa 2026.

Ano ang magiging presyo ng BONK sa 2031?

Sa 2031, ang presyo ng BONK ay inaasahang tataas ng +40.00%. Sa pagtatapos ng 2031, ang presyo ng BONK ay inaasahang aabot sa ₱0.{7}6601, na may pinagsama-samang ROI na +117.66%.

Bonk on ETH price history (PHP)

The price of Bonk on ETH is -96.32% over the last year. The highest price of in PHP in the last year was ₱0.{5}3374 and the lowest price of in PHP in the last year was ₱0.{7}2971.
TimePrice change (%)Price change (%)Lowest priceAng pinakamababang presyo ng {0} sa corresponding time period.Highest price Highest price
24h-1.49%₱0.{7}2971₱0.{7}3036
7d-10.32%₱0.{7}2971₱0.{7}3410
30d-8.15%₱0.{7}2971₱0.{7}4252
90d-81.50%₱0.{7}2971₱0.{6}1652
1y-96.32%₱0.{7}2971₱0.{5}3374
All-time-96.32%₱0.{7}2971(2025-03-30, Kahapon )₱0.{5}3374(2024-05-11, 325 araw ang nakalipas )

Bonk on ETH impormasyon sa merkado

Bonk on ETH's market cap history

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Ganap na diluted market cap
₱3,032,651.25
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Bonk on ETH holdings by concentration

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Bonk on ETH addresses by time held

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Bonk on ETH na mga rating

Mga average na rating mula sa komunidad
4.4
100 na mga rating
Ang nilalamang ito ay para sa mga layuning pang-impormasyon lamang.

Ang mga tao ay nagtatanong din tungkol sa presyo ng Bonk on ETH.

Ano ang kasalukuyang presyo ng Bonk on ETH?

The live price of Bonk on ETH is ₱0 per (BONK/PHP) with a current market cap of ₱0 PHP. Bonk on ETH's value undergoes frequent fluctuations due to the continuous 24/7 activity in the crypto market. Bonk on ETH's current price in real-time and its historical data is available on Bitget.

Ano ang 24 na oras na dami ng trading ng Bonk on ETH?

Sa nakalipas na 24 na oras, ang dami ng trading ng Bonk on ETH ay ₱0.00.

Ano ang all-time high ng Bonk on ETH?

Ang all-time high ng Bonk on ETH ay ₱0.{5}3374. Ang pinakamataas na presyong ito sa lahat ng oras ay ang pinakamataas na presyo para sa Bonk on ETH mula noong inilunsad ito.

Maaari ba akong bumili ng Bonk on ETH sa Bitget?

Oo, ang Bonk on ETH ay kasalukuyang magagamit sa sentralisadong palitan ng Bitget. Para sa mas detalyadong mga tagubilin, tingnan ang aming kapaki-pakinabang na gabay na Paano bumili ng .

Maaari ba akong makakuha ng matatag na kita mula sa investing sa Bonk on ETH?

Siyempre, nagbibigay ang Bitget ng estratehikong platform ng trading, na may mga matatalinong bot sa pangangalakal upang i-automate ang iyong mga pangangalakal at kumita ng kita.

Saan ako makakabili ng Bonk on ETH na may pinakamababang bayad?

Ikinalulugod naming ipahayag na ang estratehikong platform ng trading ay magagamit na ngayon sa Bitget exchange. Nag-ooffer ang Bitget ng nangunguna sa industriya ng mga trading fee at depth upang matiyak ang kumikitang pamumuhunan para sa mga trader.

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Ang mga investment sa Cryptocurrency, kabilang ang pagbili ng Bonk on ETH online sa pamamagitan ng Bitget, ay napapailalim sa market risk. Nagbibigay ang Bitget ng madali at convenient paraan para makabili ka ng Bonk on ETH, at sinusubukan namin ang aming makakaya upang ganap na ipaalam sa aming mga user ang tungkol sa bawat cryptocurrency na i-eooffer namin sa exchange. Gayunpaman, hindi kami mananagot para sa mga resulta na maaaring lumabas mula sa iyong pagbili ng Bonk on ETH. Ang page na ito at anumang impormasyong kasama ay hindi isang pag-endorso ng anumang partikular na cryptocurrency.

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