dup

dmzj update predict

您需要先安裝使用者腳本管理器擴展,如 TampermonkeyGreasemonkeyViolentmonkey 之後才能安裝該腳本。

You will need to install an extension such as Tampermonkey to install this script.

您需要先安裝使用者腳本管理器擴充功能,如 TampermonkeyViolentmonkey 後才能安裝該腳本。

您需要先安裝使用者腳本管理器擴充功能,如 TampermonkeyUserscripts 後才能安裝該腳本。

你需要先安裝一款使用者腳本管理器擴展,比如 Tampermonkey,才能安裝此腳本

您需要先安裝使用者腳本管理器擴充功能後才能安裝該腳本。

(我已經安裝了使用者腳本管理器,讓我安裝!)

你需要先安裝一款使用者樣式管理器擴展,比如 Stylus,才能安裝此樣式

你需要先安裝一款使用者樣式管理器擴展,比如 Stylus,才能安裝此樣式

你需要先安裝一款使用者樣式管理器擴展,比如 Stylus,才能安裝此樣式

你需要先安裝一款使用者樣式管理器擴展後才能安裝此樣式

你需要先安裝一款使用者樣式管理器擴展後才能安裝此樣式

你需要先安裝一款使用者樣式管理器擴展後才能安裝此樣式

(我已經安裝了使用者樣式管理器,讓我安裝!)

// ==UserScript==
// @name         dup
// @version      0.0.1
// @include      https://manhua.dmzj.com/*
// @description  dmzj update predict
// @grant        GM_xmlhttpRequest
// @namespace    https://greasyfork.org/users/164996a
// @require      https://cdnjs.cloudflare.com/ajax/libs/Chart.js/2.7.3/Chart.min.js
// ==/UserScript==
// https://github.com/Tom-Alexander/regression-js
const Regression = () => {
  const DEFAULT_OPTIONS = { order: 2, precision: 2, period: null }
  function gaussianElimination(input, order) {
    const matrix = input
    const n = input.length - 1
    const coefficients = [order]
    for (let i = 0; i < n; i++) {
      let maxrow = i
      for (let j = i + 1; j < n; j++) {
        if (Math.abs(matrix[i][j]) > Math.abs(matrix[i][maxrow])) {
          maxrow = j
        }
      }
      for (let k = i; k < n + 1; k++) {
        const tmp = matrix[k][i]
        matrix[k][i] = matrix[k][maxrow]
        matrix[k][maxrow] = tmp
      }
      for (let j = i + 1; j < n; j++) {
        for (let k = n; k >= i; k--) {
          matrix[k][j] -= (matrix[k][i] * matrix[i][j]) / matrix[i][i]
        }
      }
    }
    for (let j = n - 1; j >= 0; j--) {
      let total = 0
      for (let k = j + 1; k < n; k++) {
        total += matrix[k][j] * coefficients[k]
      }
      coefficients[j] = (matrix[n][j] - total) / matrix[j][j]
    }
    return coefficients
  }
  function round(number, precision) {
    const factor = 10 ** precision
    return Math.round(number * factor) / factor
  }
  const methods = {
    linear(data, options) {
      const sum = [0, 0, 0, 0, 0]
      let len = 0

      for (let n = 0; n < data.length; n++) {
        if (data[n][1] !== null) {
          len++
          sum[0] += data[n][0]
          sum[1] += data[n][1]
          sum[2] += data[n][0] * data[n][0]
          sum[3] += data[n][0] * data[n][1]
          sum[4] += data[n][1] * data[n][1]
        }
      }

      const run = len * sum[2] - sum[0] * sum[0]
      const rise = len * sum[3] - sum[0] * sum[1]
      const gradient = run === 0 ? 0 : round(rise / run, options.precision)
      const intercept = round(sum[1] / len - (gradient * sum[0]) / len, options.precision)

      const predict = x => [
        round(x, options.precision),
        round(gradient * x + intercept, options.precision)
      ]

      const points = data.map(point => predict(point[0]))

      return {
        points,
        predict,
        equation: [gradient, intercept],
        r2: round(determinationCoefficient(data, points), options.precision),
        string: intercept === 0 ? `y = ${gradient}x` : `y = ${gradient}x + ${intercept}`
      }
    },
    polynomial(data, options) {
      const lhs = []
      const rhs = []
      let a = 0
      let b = 0
      const len = data.length
      const k = options.order + 1
      for (let i = 0; i < k; i++) {
        for (let l = 0; l < len; l++) {
          if (data[l][1] !== null) {
            a += data[l][0] ** i * data[l][1]
          }
        }
        lhs.push(a)
        a = 0
        const c = []
        for (let j = 0; j < k; j++) {
          for (let l = 0; l < len; l++) {
            if (data[l][1] !== null) {
              b += data[l][0] ** (i + j)
            }
          }
          c.push(b)
          b = 0
        }
        rhs.push(c)
      }
      rhs.push(lhs)
      const coefficients = gaussianElimination(rhs, k).map(v =>
        round(v, options.precision)
      )
      const predict = x => [
        round(x, options.precision),
        round(
          coefficients.reduce((sum, coeff, power) => sum + coeff * x ** power, 0),
          options.precision
        )
      ]
      return {
        predict
      }
    }
  }
  function createWrapper() {
    const reduce = (accumulator, name) => ({
      _round: round,
      ...accumulator,
      [name](data, supplied) {
        return methods[name](data, {
          ...DEFAULT_OPTIONS,
          ...supplied
        })
      }
    })
    return Object.keys(methods).reduce(reduce, {})
  }
  return createWrapper()
}

const gmFetch = url =>
  new Promise((resolve, reject) => {
    GM_xmlhttpRequest({
      url: url,
      method: 'GET',
      onload: resolve,
      onerror: reject
    })
  })
// https://github.com/tkkcc/flutter_dmzj/blob/master/lib/util/api.dart
const comic = async id => {
  const channel = 'Android'
  const version = '2.7.009'
  const api3 = 'https://v3api.dmzj.com'
  let a = await gmFetch(`${api3}/comic/${id}.json?channel=${channel}&version=${version}`)
  if (a.status !== 200) return
  a = JSON.parse(a.responseText)
  // only process first chapter
  if (a.status[0].tag_name !== '连载中') return
  // console.log(a)
  a = a.chapters[0].data.map(i => ({
    id: i.chapter_id,
    order: i.chapter_order,
    title: i.chapter_title,
    size: i.filesize,
    time: i.updatetime
  }))
  return a
}

const format = i => new Date(i * 1000).toISOString().slice(0, 10)
const human = i => {
  const a = new Date(i * 1000)
  const b = new Date()
  let c = ((a - b) / (1000 * 60 * 60 * 24)) >> 0
  // console.log(c)
  if (c === 0) return '今天更新'
  if (c === 1) return '明天更新'
  if (c < 7) return c + '天后更新'
  c = (c / 7) >> 0
  if (c < 3) return '下周更新'
  if (c < 5) return c + '周后更新'
  if (c < 6) return c + '本月更新'
}

const html = `
<style>
body {
  text-align: center;
}
div.regression_canvas {
  background: #fefefe;
  display: none;
  // margin: 3em;
  padding: 1em;
  width: 40em;
  left: -36em;
  top: 0em;
  z-index: 2;
}
span.regression_app:hover > div {
  display: inline-block;
  position: absolute;
}
span.regression_app {
  position: relative;
  color: slateblue;
  float: right;
}
</style>
<span class="regression_app">
<div class="regression_canvas">
  <canvas width="10" height="10"></canvas>
</div>
</span>`

// main
const main = async () => {
  // data
  if (typeof g_current_id === undefined) return
  const p = document.querySelector(
    'div.middleright div.odd_anim_title > div.odd_anim_title_m'
  )
  if (!p) return
  const a = await comic(g_current_id)
  if (!a || a.length < 5) return
  a.sort((a, b) => a.time - b.time)
  const b = a.slice(-5).map((i, index) => [index, i.time])
  const result = Regression().polynomial(b, { order: 2 })
  let d = result.predict(b.length)
  if (d[1] < b[b.length - 1][1]) return
  d = human(d[1])
  if (!d) return

  // dom
  p.insertAdjacentHTML('beforeend', html)
  document.querySelector('.regression_app').insertAdjacentText('afterbegin', d)
  const ctx = document
    .querySelector('.regression_canvas')
    .firstElementChild.getContext('2d')
  const config = {
    type: 'line',
    data: {
      labels: a.map(i => i.title),
      datasets: [
        {
          backgroundColor: 'slateblue',
          borderColor: 'slateblue',
          data: a.map(i => i.time),
          fill: false
        }
      ]
    },
    options: {
      responsive: true,
      legend: {
        display: false
      },
      title: {
        display: true,
        text: '更新记录'
      },
      tooltips: {
        intersect: false,
        callbacks: {
          title(item, data) {
            return item[0].xLabel + ' ' + format(item[0].yLabel) + '更新'
          },
          label() {}
        }
      },
      elements: {
        line: {
          tension: 0 // disables bezier curves
        }
      },
      scales: {
        xAxes: [
          {
            gridLines: {
              display: false
            }
          }
        ],
        yAxes: [
          {
            gridLines: {
              display: false
            },
            ticks: {
              callback: format
            }
          }
        ]
      }
    }
  }
  new Chart(ctx, config)
}
main()