Moonfrost发布封闭Alpha版本3,将于7月29日开始

币界网2024-07-30 tarihinde yayınlandı2024-07-30 tarihinde güncellendi

币界网报道:

Moonfrost是一款基于区块链的游戏,将农业模拟与社交互动相结合,将于7月29日推出其封闭Alpha Release 3(AR3)阶段,推出旨在增强玩家互动和社区参与的社交中心“The Village”。

此次发布是在Frost Hunter Genesis系列发布之后,该系列由7月24日铸造的500枚限量版NFT组成。这些NFT保证可以访问所有未来的alpha和beta测试,并提供Frost($Frost)代币的潜在空投——这是游戏的独家加密货币。

AR3的访问权限仅限于Frost Hunter Genesis Collection持有者、AR1和AR2的前玩家以及具有“欢迎名单”角色的社区成员。初始球员上限设定为10000,并可能根据压力测试的结果进行调整。

来源:Moonfrost

什么是月霜?

由Oxalis Games开发,Moonfrost是一款生活模拟农业RPG,将Stardew Valley的怀旧魅力与区块链元素相结合。

游戏允许玩家自定义农场,与各种角色建立关系,并揭开秘密。玩家可以耕种、收集资源、制作物品和装饰房屋,同时吸引NPC到他们的城镇。

该游戏可在PC和移动平台上使用,并包括需要活跃互联网连接的社交功能。

来源:Moonfrost

对Alpha Release 3有什么期待?

Moonfrost的Alpha Release 3(AR3)计划于7月29日开始,并将在仍处于Alpha开发阶段的同时引入新功能和更新。

参与者应该预料到一些不完整的区域和错误,因为游戏仍在改进中,反馈将被收集并用于在整个游戏测试中进行改进。虽然角色定制在AR3中不可用,但玩家可以期待碎片($Shards)分发和排行榜机制的变化。

游戏测试的具体结束日期最初不会确定,一旦游戏测试开始并评估了游戏平衡和玩家体验的调整,就会宣布。然而,它证实,与AR2(农业节)相比,AR3将提供更长的时间。

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